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Autori principali: Gupta, Gaurav Kumar, Singh, Aditi, Manikandan, Sijo Valayakkad, Ehtesham, Abul
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2405.06712
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author Gupta, Gaurav Kumar
Singh, Aditi
Manikandan, Sijo Valayakkad
Ehtesham, Abul
author_facet Gupta, Gaurav Kumar
Singh, Aditi
Manikandan, Sijo Valayakkad
Ehtesham, Abul
contents The recent swift development of LLMs like GPT-4, Gemini, and GPT-3.5 offers a transformative opportunity in medicine and healthcare, especially in digital diagnostics. This study evaluates each model diagnostic abilities by interpreting a user symptoms and determining diagnoses that fit well with common illnesses, and it demonstrates how each of these models could significantly increase diagnostic accuracy and efficiency. Through a series of diagnostic prompts based on symptoms from medical databases, GPT-4 demonstrates higher diagnostic accuracy from its deep and complete history of training on medical data. Meanwhile, Gemini performs with high precision as a critical tool in disease triage, demonstrating its potential to be a reliable model when physicians are trying to make high-risk diagnoses. GPT-3.5, though slightly less advanced, is a good tool for medical diagnostics. This study highlights the need to study LLMs for healthcare and clinical practices with more care and attention, ensuring that any system utilizing LLMs promotes patient privacy and complies with health information privacy laws such as HIPAA compliance, as well as the social consequences that affect the varied individuals in complex healthcare contexts. This study marks the start of a larger future effort to study the various ways in which assigning ethical concerns to LLMs task of learning from human biases could unearth new ways to apply AI in complex medical settings.
format Preprint
id arxiv_https___arxiv_org_abs_2405_06712
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Digital Diagnostics: The Potential Of Large Language Models In Recognizing Symptoms Of Common Illnesses
Gupta, Gaurav Kumar
Singh, Aditi
Manikandan, Sijo Valayakkad
Ehtesham, Abul
Computation and Language
Artificial Intelligence
The recent swift development of LLMs like GPT-4, Gemini, and GPT-3.5 offers a transformative opportunity in medicine and healthcare, especially in digital diagnostics. This study evaluates each model diagnostic abilities by interpreting a user symptoms and determining diagnoses that fit well with common illnesses, and it demonstrates how each of these models could significantly increase diagnostic accuracy and efficiency. Through a series of diagnostic prompts based on symptoms from medical databases, GPT-4 demonstrates higher diagnostic accuracy from its deep and complete history of training on medical data. Meanwhile, Gemini performs with high precision as a critical tool in disease triage, demonstrating its potential to be a reliable model when physicians are trying to make high-risk diagnoses. GPT-3.5, though slightly less advanced, is a good tool for medical diagnostics. This study highlights the need to study LLMs for healthcare and clinical practices with more care and attention, ensuring that any system utilizing LLMs promotes patient privacy and complies with health information privacy laws such as HIPAA compliance, as well as the social consequences that affect the varied individuals in complex healthcare contexts. This study marks the start of a larger future effort to study the various ways in which assigning ethical concerns to LLMs task of learning from human biases could unearth new ways to apply AI in complex medical settings.
title Digital Diagnostics: The Potential Of Large Language Models In Recognizing Symptoms Of Common Illnesses
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2405.06712