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Bibliographic Details
Main Authors: Weerasekara, Sachini, Kamarthi, Sagar, Isaacs, Jacqueline
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2502.13290
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author Weerasekara, Sachini
Kamarthi, Sagar
Isaacs, Jacqueline
author_facet Weerasekara, Sachini
Kamarthi, Sagar
Isaacs, Jacqueline
contents Predicting medical events in advance within critical care settings is paramount for patient outcomes and resource management. Utilizing predictive models, healthcare providers can anticipate issues such as cardiac arrest, sepsis, or respiratory failure before they manifest. Recently, there has been a surge in research focusing on forecasting adverse medical event onsets prior to clinical manifestation using machine learning. However, while these models provide temporal prognostic predictions for the occurrence of a specific adverse event of interest within defined time intervals, their interpretability often remains a challenge. In this work, we explore the applicability of neural temporal point processes in the context of adverse event onset prediction, with the aim of explaining clinical pathways and providing interpretable insights. Our experiments span six state-of-the-art neural point processes and six critical care datasets, each focusing on the onset of distinct adverse events. This work represents a novel application class of neural temporal point processes in event prediction.
format Preprint
id arxiv_https___arxiv_org_abs_2502_13290
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Prediction of Clinical Complication Onset using Neural Point Processes
Weerasekara, Sachini
Kamarthi, Sagar
Isaacs, Jacqueline
Machine Learning
Artificial Intelligence
Predicting medical events in advance within critical care settings is paramount for patient outcomes and resource management. Utilizing predictive models, healthcare providers can anticipate issues such as cardiac arrest, sepsis, or respiratory failure before they manifest. Recently, there has been a surge in research focusing on forecasting adverse medical event onsets prior to clinical manifestation using machine learning. However, while these models provide temporal prognostic predictions for the occurrence of a specific adverse event of interest within defined time intervals, their interpretability often remains a challenge. In this work, we explore the applicability of neural temporal point processes in the context of adverse event onset prediction, with the aim of explaining clinical pathways and providing interpretable insights. Our experiments span six state-of-the-art neural point processes and six critical care datasets, each focusing on the onset of distinct adverse events. This work represents a novel application class of neural temporal point processes in event prediction.
title Prediction of Clinical Complication Onset using Neural Point Processes
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2502.13290