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Using Generative AI To Boost Empathy In Medical Students And Medical Doctors

  • Nishadil
  • January 06, 2024
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  • 38 minutes read
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Using Generative AI To Boost Empathy In Medical Students And Medical Doctors

Generative AI comes to aid medical students and medical doctors in being empathetic. In today’s column, I will be exploring how generative AI enters into a seemingly age old matter concerning the nature and role of empathy among medical doctors and medical students. Here’s the backstory. A general belief is that seasoned physicians and even newbie budding doctors ought to be leaning into being empathetic toward their patients.

Medical schools have taken up this mantle and sought to train medical students on the precepts of empathy in hopes of launching them into a career steeped in an embodiment of empathy. A wide range of training methods have been used, including group discussions, individual readings, self reflection, in person training exercises, online computer based simulations such as the use of VR (virtual reality), training films, and the like.

A shiny new tool has ridden into town with quite a bit of gusto and brash bravado. Turns out that the latest AI, particularly generative AI, can be a catalyst for the empathetic aspirations entailing existing doctors and those soon to be newest generation of medical doctors. The use of generative AI for this specific purpose is still in its infancy.

This makes sense since we only have had advanced levels of generative AI for a short while so far. The earlier versions of generative AI were not nearly fluent enough to likely make a substantive difference in the empathy enablement realm. Some prior uses were rickety and regrettably left an adverse impression of what well devised generative AI can do.

For those that might have tried generative AI for this devout purpose in the past, take a deep breath and with a refreshed view, allocate openminded time to do a relook. Modern day generative AI is a world of difference and nowadays provides impressive empathy enabling facets. That being said, the manner and methods of attaining success with these latest large language models (LLMs) are a bit more complicated than might seem at first glance.

It is easy to say that generative AI can be an added tool in the empathy enablement process, but numerous twists and turns can muddle or possibly undercut the desired journey. As they say, look before you leap. Do due diligence and make sure that you’ve laid out a suitable path for achieving success when leveraging generative AI as an empathy enablement machination.

I will approach this weighty discussion in the following way. First, I will take a look at the recurring realization that empathy for medical professionals is a vital matter. Research has shown that empathy can make a demonstrative lift in how patients feel about their medical interactions and that by and large quality of care and medical outcomes can be tied to the empathetic quality of their attending physician.

That’s why infusing empathetic practices into medical students is a notable yearning. Get them into an empathic mode at the get go. Hopefully, this will be carried throughout their medical career and be imprinted from the very beginning. After covering the fundamental basis for having medical doctors embrace empathy, my next focus in this discussion will be on the nature of empathy per se.

Some say that empathy cannot be readily defined. You are either empathetic or you are not. It is instinctive. If that were the case, the goal of training empathetic enablement would seem fruitless. An alternative view, and one that I strongly support, is that you can train empathetic enablement and we would be missing a huge opportunity by simply shrugging our shoulders and settling with the notion that someone either has it or they don’t.

The next stage of this analysis consists of examining how generative AI can be an empathy enabler in a medical profession context. Besides explaining how and why this is useful, I will provide you with various illustrative examples via the use of a widely and wildly popular generative AI app known as ChatGPT.

You likely have heard of ChatGPT or perhaps used it. The AI maker OpenAI introduced ChatGPT into the public sphere in November 2022 and the rest is history, as one might say. There are an estimated 100 million weekly active users of ChatGPT. That’s an impressive number and indicative of the vast use of this particular generative AI app.

I will finish up the discussion with some suggested tips and next steps. Get yourself ready for an exciting and thought provoking ride. Empathy As Essential To Medical Doctors Let’s begin at the beginning. An often quoted remark that is attributed to Sir William Osler, a legendary figure in the training of physicians and a pioneer in shifting medical students from lectures only training to include patient based clinical encounters, purportedly said this: One interpretation of the statement is that medical students and medical doctors can readily fall into a mental trap of distinctly not listening to their patients.

This can happen due to the rushed nature of being in medicine. Clock in a patient and quickly move to the next. No time for listening is allowed or encouraged. Another downfall is viewing a patient as though they were a machine. You look at the patient in a strictly anatomical fashion. Just gauge what ails them and invoke an exceedingly mechanical solution to their woes.

Perhaps the most dreadful of the interpretations is that there is a gut felt belief that no genuine need to listen to the patient is required. Consider this line of exasperating reasoning. What do patients know about medicine? Nothing. What might a patient tell you about their malady? Nothing useful.

The famous TV show House vividly showcased that patients apparently lie, they cheat, throw you off your game, and otherwise proffer nonsensical utterances. It is clearly a waste of valuable medical time and scarce resources to seemingly listen to patients. Ergo, do the “right” thing and opt overtly to not listen to patients, and furthermore, don’t even let them open the door to talking because it just encourages them to divert from the authentic medical endeavor at hand.

The question arises of how to turn around that kind of reasoning and inspire a listening methodology. In addition, perhaps if medical students don’t already have such denouncing preconceptions, maybe we can start them freshly on a path that won’t be stalled or diverted into a later non listening mode.

Or we have at least instigated a fighting chance of having them be ready for the alluring temptations and gravitational forces that will seek to push them toward a non listening mindset. A considered modern version of the Hippocratic Oath that was devised in 1964 by Dr. Louis Lasagna, Dean of the School of Medicine at Tufts University, tries to highlight that the act of listening, or actually being empathetic, needs to be at the core of becoming and being a medical doctor.

Here are two salient excerpts from that Hippocratic Oath: Those words were true then and are certainly still vital now, perhaps even more so in an era of fast paced medicine that is replete with lots of hands offs, volumes of paperwork, and tightly timed stipulations for performing medical services.

Empathy Enablement During Medical School A modern day research study on fostering empathy while in medical school provides several handy points on this serious and significant topic. The research paper I’d like to reference is entitled “Empathy in Medical Education: Its Nature and Nurture — a Qualitative Study of the Views of Students and Tutors” by William Laughey, Jane Atkinson, Alison M Craig, Laura Douglas, Megan EL Brown, Jessica L Scott, Hugh Alberti, Gabrielle Finn, and was published in the Medical Science Educator , October 2021.

Here are some mindful points (excerpts): There are useful takeaways in those salient points that I’d like to emphasize. First, as I earlier noted, suitably making use of empathy leads to greater satisfaction by the patient and likely better medical outcomes. Interestingly, and importantly, the medical doctor is likely to also indicate a higher level of satisfaction too.

This makes sense. They were able to better aid their patient, plus, they personally became more engaged and were not simply a bystander or distant observer of their patient. Lest you disregard that doctors should need to be satisfied with their work, you would be sadly undercutting a quiet but tremendous part of what keeps them in the game of medicine, namely, that you are able to take pride in your work and earnestly believe that you are doing so for the betterment of humankind.

That’s a huge motivation and will help in confronting the arduous and vexing trials and tribulations of being in the medical profession. Another notable point in the excerpted statements is that empathy tends to involve a kind of mental crossover undertaken by the medical professional as pertains to their patients.

The deal is this. A medical doctor or a medical student has to discern how to put themselves into the shoes of their patients. This is not easy to do. The patients being seen are bound to be from all walks of life and the medical professional might have little or no experience in their own life that compares.

Fortunately, and as I alluded to earlier, identifiable techniques and methods can be used to aid in undertaking a smattering of a crossover, doing so to some reasonable degree that can provide keen insights into the patient and their circumstances. A big and persistent concern that faces medical schools is that there is a sour pattern associated with empathy, or shall I call it anti empathy, that tends to arise once a medical student reaches the latter portions of their medical training.

The researchers in the aforementioned paper noted this disturbing phenomenon (excerpts): Let’s briefly unpack those remarks. Imagine that a medical school does a wonderful job in the early days of medical education to foster an empathetic perspective in their medical students. Good job, congrats. But this might be a temporary fix.

Further down the road, in the latter stages of the medical program, perhaps the assumption is made that the empathy “thing” was already accomplished. No need to push it any further. As such, the schooling aims to pound away solely on biomedical details. Will the medical student still retain their prior learning and engagement in empathetic practices of medicine? Maybe some will, and perhaps a lot won’t.

Adding more fuel to that fire, imagine further that the role models that the medical students are admiring are physicians and other medical professionals who either never thought empathy was useful, or who over years of agonizing devaluation of empathy have let it fade from view. Is a medical student to somehow look past that result and still cling to the earlier encouraged empathetic values? That is a hard pill to swallow and can readily drain the empathy enablement from their tired and exhausted minds and bodies.

That’s why there is much discussion in the medical education realm about formal curriculum, informal curriculum, hidden curriculum, and so on. There might be a formal head held high proclamation about empathy, meanwhile, the under the table practical ground level perspective is saying don’t be overly concerned about empathy.

If you can fit it in, fine, but if not, that’s fine too. In some respects, this often produces so called tick the box empathy. The medical student is asked if they have been empathetic that day with their patients. They tick the box that says yes. The mentoring doctor confirms the yes with yet another tick the box affirmation.

The paperwork looks dandy. The empathy, well, probably not so much. You might be tempted to assume that these issues underlying empathy enablement in medical school might only be confined to a few programs here or there. Sorry, that is not the case. Meta analyses that scour a wide breadth of medical literature tend to suggest that the problem is pervasive.

I’ll highlight one such study in a moment. Besides the various logistics and influencing factors, another sizable question is what kind of instruction or methods of education and training can seek to get medical students into an empathy mode as a medical professional. If you aim to foster empathy, what approach will get you the biggest bang for the buck? There might be methods that seem miraculous but only have a transitory impact.

You want to somehow instill empathy enablement sustainably . A form of permanence is needed else either empathy decay or the roguish powers of depleting empathy will prevail. A comprehensive meta synthesis recently reported on these matters. In a research study entitled “Medical Students’ Perspectives on Empathy: A Systematic Review and Metasynthesis” by Emmanuel Costa Drolon, Laurence Verneuil, Emilie Manolios, Anne Revah Levy, and Jordan Sibeoni, Academic Medicine , January 2021, here’s what they determined (excerpts): A key point is that not only is it hard to define empathy, but it is also hard to discern what methods will do best at instilling empathy, especially on a sustained basis.

You want to make sure that the medical students can weather the storm. They will encounter lots of harsh winds, blustery snow, and formidable thunderous attacks upon a desire to embrace and retain an empathetic medical mindset and professional disposition. I’d like to bring up an important mental framework regarding empathy and then we’ll be ready to move into the next stage of this discussion including generative AI.

The mental framework involves a clarifying conception that casts empathy as akin to a hydraulic process or model. This will be valuable when considering the advent and adoption of generative AI for empathy enablement in medical doctors and medical students. Hydraulic Model Of Empathy When you pour water into a container, you are witnessing the awesomeness of hydraulics.

As children, we learn about hydraulics almost without explicit instruction. You tilt a cup filled with water and let it flow into a bucket or similar container. Will the water overfill the bucket? If not, how much remaining space is available? Can you calculate how many additional cups are needed to fill the bucket? Suppose the bucket has a small hole.

What does this do to the calculus of the water, the cups, and the container? Adults take all of this for granted. Until you see a toddler playing out these difficulties, you don’t realize that you’ve already discovered the nuances of hydraulics. They are ingrained in your mind. Most of the time, you don’t explicitly think about how you think about hydraulics.

Only if you are presented with some outlier problems do you start to invoke the precepts that seem readily at hand in your mind. Why all this talk about hydraulics? Because one means of conceiving of empathy entails adopting a hydraulics metaphor or model. Allow me to elaborate. A medical school student eagerly starts their first year of medical school.

The medical program aims to get this student and all other students up to speed on empathy and empathetic thinking. Let’s say that we want to attain an empathy level on some scale that we’ll label a 10 as the topmost empathetic capability as a medical professional. Our goal is to get all the medical students to at least an 8.

Sure, we might wish for them all to be 10s, but realistically we will accept that they end up around 8 or more. We definitely don’t want any that are less than an 8. That would be disappointing. Okay, so the medical school student that I just noted is supposed to become at least an 8. Do we have a long tough haul to get to an 8 for this student, or is it an easy hop? The answer is that you can’t especially say because we don’t know where the student resides on the empathy scale at this juncture.

Perhaps the student is a 7. Hopefully, becoming an 8 should be a breeze. Imagine if the student is already a 10, we would presumably aim to make sure they don’t slip downward and be delighted they are already a 10. If this student is currently a 1, we seem to have a momentous task on our hands. Getting to an 8 might either be rough or perhaps nearly impossible in the time and resources in place to accomplish the empathy enablement.

This mention of a scale associated with empathy is essentially a hydraulics metaphor or model. Recall the child that tipped the cup to pour water into a bucket. In a sense, perhaps crudely, you could assert that the empathy of a medical student is subject to hydraulics. They have some semblance of empathy when they walk in the door of medical school.

This empathy will seemingly be further enabled. The mindfulness of empathy rises. At some point, the empathy might wane, such as the reported studies of how medical students in the latter stages tend to lessen their empathy. I trust that you can see the utility of a hydraulics perspective on empathy.

A medical school student might have empathy leakage, as it were, during the latter stages of a medical school program. If so, and assuming we want to ensure that their empathy maintains whatever level we might have earlier achieved, you need to do something that refills the empathy. An assumption that empathy once reaching a particular level will always remain at that level is in defiance of a conventional sense of hydraulics.

Something can happen that drains, evaporates, or otherwise diminishes empathy. One debate is whether empathy is in the head or the heart. I won’t get into that heated topic here. Instead, let’s go with the hydraulics model. A medical student has formed some ascertained degree of empathy as related to medical work.

We aren’t going to say whether it is in the head or the heart. From an external perspective, we are going to focus on how much empathy they embody. Wherever it is, is where it is. Another debate is whether empathy is purely intrinsic. The viewpoint is that a person has it or they don’t. You can’t turn a horse into a fish.

Some retort that a more suitable idea is that you can turn a caterpillar into a butterfly. Everyone is amenable to embracing empathy. For some, it is harder to go up the curve. For some, once up the curve, it is harder to stay there. Anyway, let’s presume that humans conventionally can embrace empathy and that for some it is easier because it is perhaps intrinsic, while others must belabor more so to get it (of course, this takes us down the classic nature versus nurture discourse, an abyss unto itself).

The handy aspect of a hydraulics perspective is that it helps quantify something that without quantification becomes almost intractable to cope with. The old saying is that you cannot manage that which you can’t measure. How can you know where medical students start from when they first enter into the medical school program? How will you know when they have attained a desired threshold of empathy? How will you keep tabs on their ebb and flow of empathetic enablement? You have a fighting chance with some form of model, such as the hydraulics framework.

To clarify, there are oppositions to the metaphor. Maybe we are wrong to envision empathy as some kind of fluid that you pour into the heads of medical students. Perhaps this undercuts the nature of empathy. Of course, the counterviewpoint is that an attack by declaring that you pouring liquid is a cheap shot.

Nobody of genuine belief would say that it is that simple. This hydraulic concept is much more complex and is not the same as a cup and a bucket. It is more like an intricate mental plumbing that goes in lots of directions and has all manner of ways to flow, soak, deplete, emerge, submerge, and so on.

One other thing. I don’t want you to necessarily associate the hydraulics model with how generative AI comes into the picture. I say this to note that I merely brought up hydraulics due to its utility and to ensure that you knew what it was. We don’t need it per se for generative AI in this use case.

It is handy but not a necessary consideration. Let’s now move into the generative AI aspects. The Workings Of Generative AI I will soon be walking you through the use of generative AI for empathy enablement in medical students and medical doctors. Various examples using ChatGPT will aid in illuminating and illustrating the value of such an approach.

First, some quick background about generative AI to make sure we are in the same ballpark about what generative AI consists of. If you already are highly versed in generative AI, you might skim my backgrounder and then pick up once I get into the particulars of this specific use case. I’d like to start by dispelling a myth about generative AI.

Banner headlines from time to time seem to claim or heartily suggest that AI such as generative AI is sentient or that it is fully on par with human intelligence. Don’t fall for that falsity, please. Realize that generative AI is not sentient and only consists of mathematical and computational pattern matching.

The way that generative AI works is that a great deal of data is initially fed into a pattern matching algorithm that tries to identify patterns in the words that humans use. Most of the modern day generative AI apps were data trained by scanning data such as text essays and narratives that were found on the Internet.

Doing this was a means of getting the pattern matching to statistically figure out which words we use and when we tend to use those words. Generative AI is built upon the use of a large language model (LLM), which entails a large scale data structure to hold the pattern matching facets and the use of a vast amount of data to undertake the setup data training.

There are numerous generative AI apps available nowadays, including GPT 4, Bard, Gemini, Claude, ChatGPT, etc. The one that is seemingly the most popular would be ChatGPT by AI maker OpenAI. In November 2022, OpenAI’s ChatGPT was made available to the public at large and the response was astounding in terms of how people rushed to make use of the newly released AI app.

As noted earlier, there are an estimated one hundred million active weekly users at this time. Using generative AI is relatively simple. You log into a generative AI app and enter questions or comments as prompts. The generative AI app takes your prompting and uses the already devised pattern matching based on the original data training to try and respond to your prompts.

You can interact or carry on a dialogue that appears to be nearly fluent. The nature of the prompts that you use can be a make or break when it comes to getting something worthwhile out of using generative AI and I’ve discussed at length the use of state of the art prompt engineering techniques to best leverage generative AI, see the link here .

The conventional modern day generative AI is of an ilk that I refer to as generic generative AI. By and large, the data training was done on a widespread basis and involved smatterings of this or that along the way. Generative AI in that instance is not specialized in a specific domain and instead might be construed as a generalist.

If you want to use generic generative AI to advise you about financial issues, legal issues, medical issues, and the like, you ought to not consider doing so. There isn’t enough depth included in the generic generative AI to render the AI suitable for domains requiring specific expertise. AI researchers and AI developers realize that most of the contemporary generative AI is indeed generic and that people want generative AI to be deeper rather than solely shallow.

Efforts are stridently being made to try and make generative AI that contains notable depth within various selected domains. One method to do this is called RAG (retrieval augmented generation), which I’ve described in detail at the link here. Other methods are being pursued and you can expect that we will soon witness a slew of generative AI apps shaped around specific domains, see my prediction at the link here .

Generative AI In A Medical Empathy Setting I have dragged you through that introduction about generative AI to bring up something quite important in this medical profession context. Here’s the deal. Generic generative AI is not purposely devised to train someone on empathy, nor does it conventionally have data training on the specifics associated with medical students or medical doctors.

In that sense, I am going to showcase merely how generic generative AI can be overall applied to this use case. I believe you will observe that the generic does a seemingly impressive job out of the box, despite not being tailored to this specific task. There are efforts underway to do specialized data training so that generic generative AI can be adapted to the empathy enablement task, including being used in a medical school environment.

I want to also note that there are at least two venues for this usage. One is the medical school setting, which I’ve noted throughout this discussion. The other venue entails medical doctors already in practice. You see, not only does it make sense to aim to use generative AI for medical school students, but additionally do likewise with existent medical doctors.

Medical doctors ostensibly greatly range in their respective embodiment of empathy prowess. They too could leverage generative AI in ways comparable to medical school students. I want to plant the notable seed that this isn’t exclusively pertaining to medical students. Medical doctors in practice would be an appropriate target market too.

You could enlarge this to also note that medical professionals of all kinds would undoubtedly be able to make use of the same. An additional caveat to be aware of is that fruitfully using generic generative AI for this use case requires suitable acumen in prompt engineering and how to productively use generic generative AI.

This is a keystone because there are undoubtedly some medical students and some medical doctors already trying to do this on an ad hoc basis. Though their first mover bravery is noted, the problem is that they might falter when using generative AI for this task or reach a premature conclusion that the tool is not up to the task.

In that latter case, they are somewhat right in that the generic has to be adequately guided else otherwise the result might be for not. As I often note at my speaking engagements, generative AI is like a box of chocolates, and you never know for sure what you might get. There is something else that almost always comes up when I speak on this topic.

The question I get is that if generative AI isn’t sentient, presumably this implies that generative AI cannot be empathetic. Thus, the logic suggests, it would seem to be foolish to use a non empathetic capacity to somehow aid humans in becoming or being empathetic. I see this as a red herring. First, you might try the same argument about watching a film.

A movie or video about empathy regarding medical students and medical doctors is obviously not sentient and does not embody empathy. Yet, research shows that such videos can be instrumental for this purpose. To be fair, the greatest value arises when the video or movie is coupled with group interaction, sometimes pre viewing and then post viewing.

The video is a viable tool that gets a mindset underway and can be a memorable experience that will last long after the group discussions. Group discussions in the absence of a video or movie can be useful, though when coupled with a video or movie can be more inspiring and stimulating. The film nonetheless can still be viewed individually and useful even if a group discussion isn’t also paired with the movie.

One notable research study entitled “Using an Animated Film to Foster Understanding of and Engagement in Addressing Implicit Bias Through Empathy Across the Health Care Continuum” by Jennifer Adams, Renee Williams, Colleen Gillespie, Maura Minsky, Jonathan LaPook, Richard Greene, Joseph Ravenell, Jessica Dennehy, Cristina Gonzalez, Academic Medicine , November 2023, described how a film can have a demonstrative impact and especially when paired with group interactions (excerpts): A likewise methodological approach can be taken when using generative AI.

Envision this. Medical students make use of generative AI that has been specially prepared via establishing prompts or via in context modeling to aid in training about the role of empathy in a medical context. Before doing so, perhaps they have a group discussion about where their mindset is on empathy.

They then use the generative AI. Afterward, they meet again as a group. Each of them will have numerous ideas and thoughts as a result of using generative AI. The group discussion will be invigorated due to the generative AI usage. Furthermore, and this is a huge added plus, this is not a one and done activity.

The difficulty with a film or movie is that it is usually watched once and then not usually repeated since the viewers already know what it has to say. Producing a multitude of films can be costly. In contrast, the experience when using generative AI will likely vary each time the AI is used. The generative AI can also be used in an incremental fashion.

As medical students become more versed in empathy, generative AI can be prompted or devised to shift into more advanced modes. The generative AI can also provide feedback throughout. I typically describe the use of generative AI in this context as being able to do at least five significant activities: I realize that you might still have a lingering qualm that generative AI is doing those activities and yet does not embody empathy.

I already noted that group discussions could be paired with the use of generative AI. But let’s for the sake of discussion take that out of the equation. Does generative AI, despite not being empathetic in an embodied manner, still provide an effective means of performing facets such as tell me, show me, role play with me, assist me, and give me feedback? I would intuitively say yes.

Research studies are starting to line up to empirically explore this notable question. I’ll briefly mention one recent study that took a slightly different angle on the generative AI and empathy consideration. In a study entitled “Comparing Physician and Artificial Intelligence Chatbot Responses to Patient Questions Posted to a Public Social Media Forum”, John W.

Ayers, Adam Poliak, Mark Dredze, Eric C. Leas, Zechariah Zhu, Jessica B. Kelley, Dennis J. Faix, Aaron M. Goodman, Christopher A. Longhurst, Michael Hogar, Davey M. Smith, JAMA Internal Medicine , April 2023, the researchers undertook an experiment that took this approach and has these stated outcomes: I won’t dive into the details of the study here, but wanted to bring up that the study suggests that generative AI can appear to be empathetic.

In this instance, the expressed empathy seemingly was as much or more so than human medical doctors, though that is somewhat a gray area due to the comparison being based on a social media platform with presumed medical doctors responding in short form to wanton postings, rather than how they might respond to their actual patients under their care.

My point is that rather than being preoccupied with whether generative AI embodies empathy, we can instead concentrate on whether generative AI can exhibit or express empathy. Those are two different considerations. Let me explain. Recall that generative AI is data trained on massive amounts of human written text.

From that text, the pattern matching has mathematically and computationally likely patterned on how humans express empathy. If you assert that generative AI is merely a stochastic parrot that mimics what humans have said, you will at least concede that the generative AI ergo has a solid chance at expressing empathy.

You might scowl and exhort that expressing empathy is not the same as a heartfelt feeling of empathy. Sure, you can make that case. But, the bottom line, if the empathy expressed is otherwise indistinguishable from the expressed embodied empathy by humans, how can you definitively contend that the AI is so deficient as to be unusable or incapable? See my discussion about the Turing Test to see more about this black box kind of comparison, at the link here .

This is one of those endless arguments and I welcome the debate. For now, let’s go the practical route and see what generative AI can accomplish. Examples Of Generative AI In Medical Empathy Contexts I will show you some examples of using generative AI in the tell me, show me, role play, and related modes of operation.

I opted to use ChatGPT. The same types of interactions can readily be undertaken with other generative AI apps such as GPT 4, Bard, Gemini, Claude, etc. By and large, you would not likely notice much of a difference among those generative AI apps in this use case (particularly because this is generic generative AI).

If you decide to try out the same or similar dialogues using ChatGPT or some other generative AI app, please be aware that you almost for sure will not get the same exact responses. Generative AI makes use of statistics and probabilities to decide which words should be included in the generated responses.

You will discover that even if you ask the same question twice, you will likely get a different answer each time. That’s by design. It is a feature, not a bug. In my first example, I will do a Tell Me. My prompt asks ChatGPT to tell me about ways in which someone in medical school can enhance their empathy.

I will say that I am in medical school. The prompt and the responses are shown in quotation marks. “Developing empathy is crucial for healthcare professionals to build strong, trusting relationships with patients. Here are some suggestions to help you cultivate empathy as a medical student:” “ Active Listening: ” “Pay full attention to your patients when they speak.” “Avoid interrupting and allow them to express their thoughts and concerns.” “Validate their feelings and acknowledge their experiences.” “ Put Yourself in Their Shoes: ” “Try to understand the patient's perspective and imagine how they might be feeling.” “Consider the emotional and physical aspects of their experience.” “ Learn Patient Stories: ” “Take time to learn about your patients beyond their medical conditions.” “Understand their personal history, lifestyle, and any challenges they may be facing.” “ Practice Cultural Competence: ” “Be aware of and respect cultural differences.” “Learn about the cultural backgrounds of your patients to better understand their beliefs and values.” “ Non Verbal Communication: ” “Pay attention to non verbal cues such as body language, facial expressions, and tone of voice.” “Be mindful of your own non verbal communication to ensure it conveys empathy.” “ Express Empathy Verbally: ” “Use language that shows you understand and care about the patient's experience.” “Phrases like ‘I understand,’ ‘I'm here for you,’ and ‘I'm sorry you're going through this’ can convey empathy.” “ Develop Self Awareness: ” “Reflect on your own emotions and biases to better understand how they may impact your interactions with patients.” “Consider seeking feedback from mentors or peers to gain insights into your communication style.” “ Read Patient Narratives: ” “Read books, articles, or blogs written by patients about their healthcare experiences.” “This can provide valuable insights into the emotional aspects of illness and healthcare.” “Remember that empathy is a skill that can be developed and refined over time.

Continuously seeking opportunities to connect with patients on a personal level and integrating feedback into your practice will contribute to your growth as a compassionate healthcare professional.” End of ChatGPT response I’d suggest that the ChatGPT response is pretty much on target and expresses the same kinds of guidelines and hints that you might find in vetted online material on this topic.

That’s good. This Tell Me example though is somewhat stilted since there isn’t any interaction going on. The true value of generative AI is interactivity. You want to get the medical student or medical doctor engaged. The act of simply reading material is useful but not as likely memorable and activating.

Let’s do some role playing. I will pretend to be a patient needing medical advice. My prompt instructs ChatGPT to take on the persona of an empathetic medical doctor. This will allow me to see how generative AI handles empathy considerations. More importantly, a medical student or medical doctor might learn from this kind of repertoire dialoguing while pretending to be a patient.

Likely, some aspects will be perhaps a guiding light, other aspects might help to steer clear of facets that don’t seem suitable. Here we go. End of ChatGPT response I wanted you to see the value of interactivity when it comes to using generative AI. In my role as the patient in this scenario, I could take things in whatever direction I wanted to do.

I could be an abrasive patient and see what responses arise. I could be polite and an unassuming patient. The generative AI will attempt to adjust as I adjust. We are in a dance, a tango. The dialogue is not pre determined. All the interaction occurs in real time and flows along. I’d like to flip the interaction and have the generative AI be the patient.

This will give me a chance to test my chops in an attempt to be empathetic. An added twist will be that I am going to ask the generative AI to provide feedback to me along the way. I want to get constructive feedback about how I am doing. I don’t have to ask for this, but the feedback is bound to wake me up about how I am doing on an empathetic basis.

Take a look: End of ChatGPT response You hopefully observed that I purposely shifted from being less empathetic to being more empathetic. I wanted to discern whether the generative AI would catch this. As you can see, the responses by ChatGPT let me know when I was veering away from empathy, and when I was becoming more empathetic.

As mentioned earlier, these examples are only using the generic generative AI. I could readily instruct the AI to be more critical of my responses and come after me about my empathy. In this case, the default is that the generative AI has been data trained to be relatively calm and reassuring. Parlance in the AI field is that you can change the temperature of the AI and get it to be more heated if that’s what you want to experience.

In my last example, I will show you something that is kind of fun and presents a challenge for you. I’ll tell ChatGPT to craft a dialogue between two doctors. One is supposed to be empathetic, and the other is a doctor who eschews empathy. I bring this up because as pointed out earlier, one issue for medical students is they might end up interacting with hardened or soured doctors who give only scant lip service at best to empathy.

I’d like you to examine the dialogue. Your assignment is to assess both of the doctors. What lessons can be learned from this generative AI produced dialogue? Put on your thinking cap: “Empathetic Doctor (Dr. Smith): Hey, Dr. Jones, how has your day been? Any interesting patient encounters?” “Less Empathetic Doctor (Dr.

Jones): Same old, same old. Patients come in with all sorts of complaints. Honestly, I don't get why they make such a fuss about it.” “Dr. Smith: Well, you know, it's crucial to understand and address their concerns. It helps in building trust, and patients appreciate knowing that we care.” “Dr.

Jones: Trust? They're here for medical advice, not therapy. Anyway, had a guy today complaining about headaches and fatigue. Probably just needs to get more sleep or something. “Dr. Smith: It's important not to dismiss symptoms outright. Headaches and fatigue can have various causes, and we should explore them to ensure we're providing the best care.” “Dr.

Jones: Whatever. Gave him some painkillers and told him to rest. He'll be fine.” “Dr. Smith: Well, I had a patient with similar complaints today. Took the time to discuss their daily routine, any recent stressors, and suggested some lifestyle changes. It turns out they're dealing with a lot of stress at work.” “Dr.

Jones: Stress, again? People need to toughen up. Can't be holding their hands through every little issue.” “Dr. Smith: I find that addressing the underlying causes can make a significant difference in their health. It's not just about handing out prescriptions; it's about understanding their whole situation.” “Dr.

Jones: I don't have time for that. Too many patients, not enough hours in the day. If they want someone to listen to their problems, they should see a shrink.” “Dr. Smith: Patients value a doctor who listens and cares, not just someone who prescribes medications. It's about the quality of care we provide.” End of ChatGPT response How did you do in assessing the two perspectives? I’m sure you aced this one.

Conclusion I’ll finish up this discussion with a few brainteasers that will hopefully inspire your added interest in this heady subject. The common refrain that doctors need to have a good bedside manner has morphed to also include so called “webside” good manners too (being able to communicate remotely with patients, via Zoom like facilities or texting and emailing).

One approach to using generative AI is that the doctor inherently becomes more empathetic as a result of their hands on use of generative AI. Another aspect consists of doctors opting to use generative AI as their empathy surrogate. This means that rather than the human doctor responding, they use generative AI to do so in their stead.

I refer to this as a dual use of AI because it entails some positive merits but also bodes for negative consequences (ironically, the doctor potentially becomes less empathetic and more estranged from their patients). For more about dual use AI considerations, see my discussion at the link here . Consider this next mind bender.

There is likely a pre selection bias associated with those who seek and can successfully get admitted into medical school. The chances are that such a person is cut from the cloth of being devotedly science oriented and less so someone considered a person person. A problem arises that perhaps trying to instill empathy is an improbably upstream going battle.

You can’t make a square peg fit into a round hole, as they say. Can generative AI aid in this monumental transition during medical school? One viewpoint is that since the use of generative AI can be long lasting, the medical student who becomes a medical doctor can continue to rely upon generative AI for the rest of their medical career.

They can lean into generative AI whenever so needed. Do we want this, or does the use of generative AI in this extended way become a habitual or unsavory crutch? Another worthwhile consideration is that generative AI is advancing to become multi modal, see my analysis at the link here . Multi modal generative AI can potentially use text, images or pictures, audio, video, and all manner of communication modes.

This dovetails into the other means of getting medical students up to speed on empathy. For example, a film about empathy for medical doctors could be weaved into a generative AI dialogue. The AI would interact with the medical students about the lessons gleaned and be responsive to their questions and comments.

One additional brainstorming idea is that if you favor the hydraulics metaphor of empathy, generative AI could be utilized to gauge the rising and lowering levels of a doctor or medical student's empathetic enablement. I’ve discussed that generative AI can be used for sentiment analyses, see the link here , and could be used similarly in this medical context.

An upside is that the generative AI can provide empathy booster shots, in a sense, when needed. A downside is that the doctors or students might feel they are being subjected to a Big Brother overseer. The bottom line is this avenue has to be undertaken cautiously and mindfully. Let’s conclude for now with a notable quote by the famous psychologist, Carl Rogers.

He purportedly said this about empathy: Those in the medical profession will inevitably be using generative AI in various capacities, doing so will be pervasive in the medical field, and as such, we need to consider what are the best ways to intertwine generative AI into the enduring question of aiding medical doctors and medical students in embracing empathetic medical practices.

Keep your ears open, listen intently, and join in this exciting and challenging new era of generative AI augmented doctoring. Use lots of empathy as you do so, and don’t worry because we can always make more..