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Autori principali: Su, Zhixiang, Zhang, Yinan, Jing, Jiazheng, Xiao, Jie, Shen, Zhiqi
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2405.02935
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author Su, Zhixiang
Zhang, Yinan
Jing, Jiazheng
Xiao, Jie
Shen, Zhiqi
author_facet Su, Zhixiang
Zhang, Yinan
Jing, Jiazheng
Xiao, Jie
Shen, Zhiqi
contents Disease prediction holds considerable significance in modern healthcare, because of its crucial role in facilitating early intervention and implementing effective prevention measures. However, most recent disease prediction approaches heavily rely on laboratory test outcomes (e.g., blood tests and medical imaging from X-rays). Gaining access to such data for precise disease prediction is often a complex task from the standpoint of a patient and is always only available post-patient consultation. To make disease prediction available from patient-side, we propose Personalized Medical Disease Prediction (PoMP), which predicts diseases using patient health narratives including textual descriptions and demographic information. By applying PoMP, patients can gain a clearer comprehension of their conditions, empowering them to directly seek appropriate medical specialists and thereby reducing the time spent navigating healthcare communication to locate suitable doctors. We conducted extensive experiments using real-world data from Haodf to showcase the effectiveness of PoMP.
format Preprint
id arxiv_https___arxiv_org_abs_2405_02935
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Enabling Patient-side Disease Prediction via the Integration of Patient Narratives
Su, Zhixiang
Zhang, Yinan
Jing, Jiazheng
Xiao, Jie
Shen, Zhiqi
Computation and Language
Disease prediction holds considerable significance in modern healthcare, because of its crucial role in facilitating early intervention and implementing effective prevention measures. However, most recent disease prediction approaches heavily rely on laboratory test outcomes (e.g., blood tests and medical imaging from X-rays). Gaining access to such data for precise disease prediction is often a complex task from the standpoint of a patient and is always only available post-patient consultation. To make disease prediction available from patient-side, we propose Personalized Medical Disease Prediction (PoMP), which predicts diseases using patient health narratives including textual descriptions and demographic information. By applying PoMP, patients can gain a clearer comprehension of their conditions, empowering them to directly seek appropriate medical specialists and thereby reducing the time spent navigating healthcare communication to locate suitable doctors. We conducted extensive experiments using real-world data from Haodf to showcase the effectiveness of PoMP.
title Enabling Patient-side Disease Prediction via the Integration of Patient Narratives
topic Computation and Language
url https://arxiv.org/abs/2405.02935