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Using ChatGPT to Predict Cancer Predisposition Genes: A Promising Tool for Pediatric Oncologists

Background: Determining genetic susceptibility for cancer predisposition syndromes (CPS) through cancer predisposition genes (CPGs) testing is critical in facilitating appropriate prevention and surveillance strategies. This study investigates the use of ChatGPT, a large language model, in predictin...

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Autores principales: Sultan, Iyad, Al-Abdallat, Haneen, Alnajjar, Zaina, Ismail, Layan, Abukhashabeh, Razan, Bitar, Layla, Abu Shanap, Mayada
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cureus 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10666922/
https://www.ncbi.nlm.nih.gov/pubmed/38021917
http://dx.doi.org/10.7759/cureus.47594
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author Sultan, Iyad
Al-Abdallat, Haneen
Alnajjar, Zaina
Ismail, Layan
Abukhashabeh, Razan
Bitar, Layla
Abu Shanap, Mayada
author_facet Sultan, Iyad
Al-Abdallat, Haneen
Alnajjar, Zaina
Ismail, Layan
Abukhashabeh, Razan
Bitar, Layla
Abu Shanap, Mayada
author_sort Sultan, Iyad
collection PubMed
description Background: Determining genetic susceptibility for cancer predisposition syndromes (CPS) through cancer predisposition genes (CPGs) testing is critical in facilitating appropriate prevention and surveillance strategies. This study investigates the use of ChatGPT, a large language model, in predicting CPGs using clinical notes. Methods: Our study involved 53 patients with pathogenic CPG mutations. Two kinds of clinical notes were used: the first visit note, containing a thorough history and physical exam, and the genetic clinic note, summarizing the patient's diagnosis and family history. We asked ChatGPT to recommend CPS genes based on these notes and compared these predictions with previously identified mutations. Results: Rb1 was the most frequently mutated gene in our cohort (34%), followed by NF1 (9.4%), TP53 (5.7%), and VHL (5.7%). Out of 53 patients, 30 had genetic clinic notes of a median length of 54 words. ChatGPT correctly predicted the gene in 93% of these cases. However, it failed to predict EPCAM and VHL genes in specific patients. For the first visit notes (median length: 461 words), ChatGPT correctly predicted the gene in 64% of these cases. Conclusion: ChatGPT shows promise in predicting CPGs from clinical notes, particularly genetic clinic notes. This approach may be useful in enhancing CPG testing, especially in areas lacking genetic testing resources. With further training, there is a possibility for ChatGPT to improve its predictive potential and expand its clinical applicability. However, additional research is needed to explore the full potential and applicability of ChatGPT.
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spelling pubmed-106669222023-10-24 Using ChatGPT to Predict Cancer Predisposition Genes: A Promising Tool for Pediatric Oncologists Sultan, Iyad Al-Abdallat, Haneen Alnajjar, Zaina Ismail, Layan Abukhashabeh, Razan Bitar, Layla Abu Shanap, Mayada Cureus Pediatrics Background: Determining genetic susceptibility for cancer predisposition syndromes (CPS) through cancer predisposition genes (CPGs) testing is critical in facilitating appropriate prevention and surveillance strategies. This study investigates the use of ChatGPT, a large language model, in predicting CPGs using clinical notes. Methods: Our study involved 53 patients with pathogenic CPG mutations. Two kinds of clinical notes were used: the first visit note, containing a thorough history and physical exam, and the genetic clinic note, summarizing the patient's diagnosis and family history. We asked ChatGPT to recommend CPS genes based on these notes and compared these predictions with previously identified mutations. Results: Rb1 was the most frequently mutated gene in our cohort (34%), followed by NF1 (9.4%), TP53 (5.7%), and VHL (5.7%). Out of 53 patients, 30 had genetic clinic notes of a median length of 54 words. ChatGPT correctly predicted the gene in 93% of these cases. However, it failed to predict EPCAM and VHL genes in specific patients. For the first visit notes (median length: 461 words), ChatGPT correctly predicted the gene in 64% of these cases. Conclusion: ChatGPT shows promise in predicting CPGs from clinical notes, particularly genetic clinic notes. This approach may be useful in enhancing CPG testing, especially in areas lacking genetic testing resources. With further training, there is a possibility for ChatGPT to improve its predictive potential and expand its clinical applicability. However, additional research is needed to explore the full potential and applicability of ChatGPT. Cureus 2023-10-24 /pmc/articles/PMC10666922/ /pubmed/38021917 http://dx.doi.org/10.7759/cureus.47594 Text en Copyright © 2023, Sultan et al. https://creativecommons.org/licenses/by/3.0/This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Pediatrics
Sultan, Iyad
Al-Abdallat, Haneen
Alnajjar, Zaina
Ismail, Layan
Abukhashabeh, Razan
Bitar, Layla
Abu Shanap, Mayada
Using ChatGPT to Predict Cancer Predisposition Genes: A Promising Tool for Pediatric Oncologists
title Using ChatGPT to Predict Cancer Predisposition Genes: A Promising Tool for Pediatric Oncologists
title_full Using ChatGPT to Predict Cancer Predisposition Genes: A Promising Tool for Pediatric Oncologists
title_fullStr Using ChatGPT to Predict Cancer Predisposition Genes: A Promising Tool for Pediatric Oncologists
title_full_unstemmed Using ChatGPT to Predict Cancer Predisposition Genes: A Promising Tool for Pediatric Oncologists
title_short Using ChatGPT to Predict Cancer Predisposition Genes: A Promising Tool for Pediatric Oncologists
title_sort using chatgpt to predict cancer predisposition genes: a promising tool for pediatric oncologists
topic Pediatrics
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10666922/
https://www.ncbi.nlm.nih.gov/pubmed/38021917
http://dx.doi.org/10.7759/cureus.47594
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