Search icon CANCEL
Subscription
0
Cart icon
Your Cart (0 item)
Close icon
You have no products in your basket yet
Arrow left icon
Explore Products
Best Sellers
New Releases
Books
Videos
Audiobooks
Learning Hub
Conferences
Free Learning
Arrow right icon

ChatGPT for Healthcare

Save for later
  • 9 min read
  • 05 Sep 2023

article-image

Introduction

Meet ChatGPT: OpenAI's marvelously verbose chatbot, trained on a veritable Everest of text and code. Think of it as your go-to digital polymath, fluent in language translation, a whiz at whipping up creative content, and ever-eager to dispense knowledge on everything from quantum physics to quinoa recipes. 

Ready to dial in the healthcare lens? This article is your rollercoaster ride through the trials, triumphs, and tangled ethical conundrums of ChatGPT in medicine. From game-changing potential to challenges as stubborn as symptoms, we've got it all. So whether you're a seasoned healthcare pro or a tech-savvy newbie, buckle up. Will ChatGPT be healthcare's new MVP or get benched? Stick around, and let's find out together. 

Doctor in Your Pocket? Unpacking the Potential of ChatGPT in Healthcare 

Modern healthcare always seeks innovation to make things smoother and more personal. Enter ChatGPT. While not a stand-in for a doctor, this text-based AI is causing ripples from customer service to content. Below are various scenarios where ChatGPT can be leveraged in its original form or fine-tuned APIs. 

Pre-Consultation Screeners - ChatGPT-Enabled Triage 

Before conversational AI, healthcare looked into computational diagnostic aids like the 1960s' Dendral, initially for mass spectrometry, inspiring later medical systems. The 1970s brought MYCIN, designed for diagnosing bacterial infections and suggesting antibiotics. However, these early systems used inflexible "if-then" rules and lacked adaptability for nuanced human interaction. Fast-forward to today's more sophisticated digital triage platforms, and we still find remnants of these rule-based systems. While significantly more advanced, many of these platforms operate within the bounds of scripted pathways, leading to linear and often inflexible patient interactions. This rigidity can result in an inadequate capture of patient nuances, a critical aspect often needed for effective medical triage. 

The ChatGPT Advantage: Flexibility and Natural Engagement 

ChatGPT is a conversational agent with the capacity for more flexible, natural interactions due to its advanced Natural Language Understanding (NLU). Unlike conventional scanners with limited predefined pathways, ChatGPT can adapt to a broader range of patient inputs, making the pre-consultation phase more dynamic and patient-centric. It offers: 

  • Adaptive Questioning: Unlike traditional systems that follow a strict query pathway, ChatGPT can adapt its questions based on prior patient responses, potentially unearthing critical details. 
  • Contextual Understanding: Its advanced NLU allows it to understand colloquial language, idioms, and contextual cues that more rigid systems may miss. 
  • Data Synthesis: ChatGPT's ability to process and summarise information can result in a more cohesive pre-consultation report for healthcare providers, aiding in a more effective diagnosis and treatment strategy. 

Using LLMs bots like ChatGPT offers a more dynamic, flexible, and engaging approach to pre-consultation screening, optimising patient experience and healthcare provider efficacy. Below is a sample code that you can use to play around: 

import openai 
import os 
 
# Initialize OpenAI API Client 
api_key = os.environ.get("OPENAI_API_KEY")  # Retrieve the API key from environment variables 
openai.api_key = api_key  # Set the API key 
 
# Prepare the list of messages 
messages = [ 
{"role": "system", "content": "You are a pre-consultation healthcare screener. Assist the user in gathering basic symptoms before their doctor visit."}, 
{"role": "user", "content": "I've been feeling exhausted lately and have frequent headaches."} 
] 
 
# API parameters 
model = "gpt-3.5-turbo"  # Choose the appropriate engine 
max_tokens = 150  # Limit the response length 
 
# Make API call 
response = openai.ChatCompletion.create( 
  model=model, 
  messages=messages 
) 
 
# Extract and print chatbot's reply 
chatbot_reply = response['choices'][0]['message']['content'] 
print("ChatGPT: ", chatbot_reply) 

And here is the ChatGPT response:


chatgpt-for-healthcare-img-0 

Mental Health Companionship 

The escalating demand for mental health services has increased focus on employing technology as supplemental support. While it is imperative to clarify that ChatGPT is not a substitute for qualified mental health practitioners, the platform can serve as an initial point of contact for individuals experiencing non-critical emotional distress or minor stress and anxiety. Utilizing advanced NLU and fine-tuned algorithms, ChatGPT provides an opportunity for immediate emotional support, particularly during non-operational hours when traditional services may be inaccessible. 

ChatGPT can be fine-tuned to handle the sensitivities inherent in mental health discussions, thereby adhering to ethically responsible boundaries while providing immediate, albeit preliminary, support. 

ChatGPT offers real-time text support, serving as a bridge to professional help. Its advanced NLU understands emotional nuances, ensuring personalized interactions. Beyond this, ChatGPT recommends vetted mental health resources and coping techniques. For instance, if you're anxious outside clinical hours, it suggests immediate stress management tactics. And if you're hesitant about professional consultation, ChatGPT helps guide and reassure your decision. 

Let us now see, how by just changing the prompt we can use the same code as that of ChatGPT enabled triage to build a mental health companion: 

Unlock access to the largest independent learning library in Tech for FREE!
Get unlimited access to 7500+ expert-authored eBooks and video courses covering every tech area you can think of.
Renews at £16.99/month. Cancel anytime
messages = [ 
{ 
        "role": "system", 
        "content": "You are a virtual mental health companion. Your primary role is to provide a supportive environment for the user. Listen actively, offer general coping strategies, and identify emotional patterns or concerns. Remember, you cannot replace professional mental health care, but can act as an interim resource. Always prioritise the user's safety and recommend seeking professional help if the need arises. Be aware of various emotional and mental scenarios, from stress and anxiety to deeper emotional concerns. Remain non-judgmental, empathetic, and consistently supportive." 
    }, 
{ 
    "role": "user", 
    "content": "I've had a long and stressful day at work. Sometimes, it just feels like everything is piling up and I can't catch a break. I need some strategies to unwind and relax." 
} 
] 
 

And here is the golden advice from ChatGPT: 

chatgpt-for-healthcare-img-1 

Providing immediate emotional support and resource guidance can be a preliminary touchpoint for those dealing with minor stress and anxiety, particularly when conventional support mechanisms are unavailable. 

Virtual Health Assistants  

In the evolving healthcare landscape, automation and artificial intelligence (AI) are increasingly being leveraged to enhance efficiency and patient care. One such application is the utilization of Virtual Health Assistants, designed to manage administrative overhead and provide informational support empathetically. The integration of ChatGPT via OpenAI's API into telehealth platforms signifies a significant advancement in this domain, offering capabilities far surpassing traditional rule-based or keyword-driven virtual assistants. 

ChatGPT boasts a customizable framework ideal for healthcare, characterized by its contextual adaptability for personalized user experiences, vast informational accuracy, and multi-functional capability that interfaces with digital health tools while upholding medical guidelines. In contrast, traditional Virtual Health Assistants, reliant on rule-based systems, suffer from scalability issues, rigid interactions, and a narrow functional scope. ChatGPT stands out by simplifying medical jargon, automating administrative chores, and ensuring a seamless healthcare journey—bridging pre-consultation to post-treatment, all by synthesizing data from diverse health platforms. 

Now, let's explore how tweaking the prompt allows us to repurpose the previous code to create a virtual health assistant. 

messages = [ 
{ 
    "role": "system", 
    "content": "You are a Virtual Health Assistant (VHA). Your primary function is to assist users in navigating the healthcare landscape. Offer guidance on general health queries, facilitate appointment scheduling, and provide informational insights on medical terminologies. While you're equipped with a broad knowledge base, it's crucial to remind users that your responses are not a substitute for professional medical advice or diagnosis. Prioritise user safety, and when in doubt, recommend that they seek direct consultation from healthcare professionals. Be empathetic, patient-centric, and uphold the highest standards of medical data privacy and security in every interaction." 
}, 
{ 
    "role": "user", 
    "content": "The doctor has recommended an Intestinal Perforation Surgery for me, scheduled for Sunday. I'm quite anxious about it. How can I best prepare mentally and physically?" 
} 
] 

Straight from ChatGPT's treasure trove of advice: 

chatgpt-for-healthcare-img-2 

So there you have it. Virtual Health Assistants might not have a medical degree, but they offer the next best thing: a responsive, informative, and competent digital sidekick to guide you through the healthcare labyrinth, leaving doctors free to focus on what really matters—your health. 

Key Contributions 

  • Patient Engagement: Utilising advanced Natural Language Understanding (NLU) capabilities, ChatGPT can facilitate more nuanced and personalised interactions, thus enriching the overall patient experience. 
  • Administrative Efficiency: ChatGPT can significantly mitigate the administrative load on healthcare staff by automating routine tasks such as appointment scheduling and informational queries. 
  • Preventative Measures: While not a diagnostic tool, ChatGPT's capacity to provide general health information and recommend further professional consultation can contribute indirectly to early preventative care. 

Potential Concerns and Solutions 

  • Data Security and Privacy: ChatGPT, in its current form, does not fully meet healthcare data security requirements. 
  • Solution: For HIPAA compliance, advanced encryption, and secure API interfaces must be implemented. 
  • Clinical Misinformation: While ChatGPT can provide general advice, there are limitations to the clinical validity of its responses. 
  • Solution: It is critical that all medical advice provided by ChatGPT is cross-referenced with up-to-date clinical guidelines and reviewed by medical professionals for accuracy. 
  • Ethical Considerations: The impersonal nature of a machine providing health-related advice could potentially result in a lack of emotional sensitivity. 
  • Solution: Ethical guidelines must be established for the algorithm, possibly integrating a 'red flag' mechanism that alerts human operators when sensitive or complex issues arise that require a more nuanced touch. 

Conclusion 

ChatGPT, while powerful, isn't a replacement for the expertise of healthcare professionals. Instead, it serves as an enhancing tool within the healthcare sector. Beyond aiding professionals, ChatGPT can increase patient engagement, reduce administrative burdens, and help in preliminary health assessments. Its broader applications include transcribing medical discussions, translating medical information across languages, and simplifying complex medical terms for better patient comprehension. For medical training, it can mimic patient scenarios, aiding in skill development. Furthermore, ChatGPT can assist in research by navigating medical literature, and conserving crucial time. However, its capabilities should always be seen as complementary, never substituting the invaluable care from healthcare professionals. 

Author Bio

Amita Kapoor is an accomplished AI consultant and educator with over 25 years of experience. She has received international recognition for her work, including the DAAD fellowship and the Intel Developer Mesh AI Innovator Award. She is a highly respected scholar with over 100 research papers and several best-selling books on deep learning and AI. After teaching for 25 years at the University of Delhi, Amita retired early and turned her focus to democratizing AI education. She currently serves as a member of the Board of Directors for the non-profit Neuromatch Academy, fostering greater accessibility to knowledge and resources in the field. After her retirement, Amita founded NePeur, a company providing data analytics and AI consultancy services. In addition, she shares her expertise with a global audience by teaching online classes on data science and AI at the University of Oxford.