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Auteurs principaux: Umapathy, Lavanya, Johnson, Patricia M, Dutt, Tarun, Tong, Angela, Nayan, Madhur, Chandarana, Hersh, Sodickson, Daniel K
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2510.15591
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author Umapathy, Lavanya
Johnson, Patricia M
Dutt, Tarun
Tong, Angela
Nayan, Madhur
Chandarana, Hersh
Sodickson, Daniel K
author_facet Umapathy, Lavanya
Johnson, Patricia M
Dutt, Tarun
Tong, Angela
Nayan, Madhur
Chandarana, Hersh
Sodickson, Daniel K
contents Temporal context in medicine is valuable in assessing key changes in patient health over time. We developed a machine learning framework to integrate diverse context from prior visits to improve health monitoring, especially when prior visits are limited and their frequency is variable. Our model first estimates initial risk of disease using medical data from the most recent patient visit, then refines this assessment using information digested from previously collected imaging and/or clinical biomarkers. We applied our framework to prostate cancer (PCa) risk prediction using data from a large population (28,342 patients, 39,013 magnetic resonance imaging scans, 68,931 blood tests) collected over nearly a decade. For predictions of the risk of clinically significant PCa at the time of the visit, integrating prior context directly converted false positives to true negatives, increasing overall specificity while preserving high sensitivity. False positive rates were reduced progressively from 51% to 33% when integrating information from up to three prior imaging examinations, as compared to using data from a single visit, and were further reduced to 24% when also including additional context from prior clinical data. For predicting the risk of PCa within five years of the visit, incorporating prior context reduced false positive rates still further (64% to 9%). Our findings show that information collected over time provides relevant context to enhance the specificity of medical risk prediction. For a wide range of progressive conditions, sufficient reduction of false positive rates using context could offer a pathway to expand longitudinal health monitoring programs to large populations with comparatively low baseline risk of disease, leading to earlier detection and improved health outcomes.
format Preprint
id arxiv_https___arxiv_org_abs_2510_15591
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Context-aware deep learning using individualized prior information reduces false positives in disease risk prediction and longitudinal health assessment
Umapathy, Lavanya
Johnson, Patricia M
Dutt, Tarun
Tong, Angela
Nayan, Madhur
Chandarana, Hersh
Sodickson, Daniel K
Artificial Intelligence
Computer Vision and Pattern Recognition
Temporal context in medicine is valuable in assessing key changes in patient health over time. We developed a machine learning framework to integrate diverse context from prior visits to improve health monitoring, especially when prior visits are limited and their frequency is variable. Our model first estimates initial risk of disease using medical data from the most recent patient visit, then refines this assessment using information digested from previously collected imaging and/or clinical biomarkers. We applied our framework to prostate cancer (PCa) risk prediction using data from a large population (28,342 patients, 39,013 magnetic resonance imaging scans, 68,931 blood tests) collected over nearly a decade. For predictions of the risk of clinically significant PCa at the time of the visit, integrating prior context directly converted false positives to true negatives, increasing overall specificity while preserving high sensitivity. False positive rates were reduced progressively from 51% to 33% when integrating information from up to three prior imaging examinations, as compared to using data from a single visit, and were further reduced to 24% when also including additional context from prior clinical data. For predicting the risk of PCa within five years of the visit, incorporating prior context reduced false positive rates still further (64% to 9%). Our findings show that information collected over time provides relevant context to enhance the specificity of medical risk prediction. For a wide range of progressive conditions, sufficient reduction of false positive rates using context could offer a pathway to expand longitudinal health monitoring programs to large populations with comparatively low baseline risk of disease, leading to earlier detection and improved health outcomes.
title Context-aware deep learning using individualized prior information reduces false positives in disease risk prediction and longitudinal health assessment
topic Artificial Intelligence
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.15591