cs.AI updates on arXiv.org 08月01日 12:08
Deep Learning-based Prediction of Clinical Trial Enrollment with Uncertainty Estimates
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本文提出一种基于深度学习的临床试验患者招募预测方法,利用预训练语言模型处理临床文档,结合表格特征,并通过概率层进行不确定性估计,有效预测患者招募数量,优于现有模型。

arXiv:2507.23607v1 Announce Type: cross Abstract: Clinical trials are a systematic endeavor to assess the safety and efficacy of new drugs or treatments. Conducting such trials typically demands significant financial investment and meticulous planning, highlighting the need for accurate predictions of trial outcomes. Accurately predicting patient enrollment, a key factor in trial success, is one of the primary challenges during the planning phase. In this work, we propose a novel deep learning-based method to address this critical challenge. Our method, implemented as a neural network model, leverages pre-trained language models (PLMs) to capture the complexities and nuances of clinical documents, transforming them into expressive representations. These representations are then combined with encoded tabular features via an attention mechanism. To account for uncertainties in enrollment prediction, we enhance the model with a probabilistic layer based on the Gamma distribution, which enables range estimation. We apply the proposed model to predict clinical trial duration, assuming site-level enrollment follows a Poisson-Gamma process. We carry out extensive experiments on real-world clinical trial data, and show that the proposed method can effectively predict the number of patients enrolled at a number of sites for a given clinical trial, outperforming established baseline models.

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深度学习 临床试验 患者招募 预测模型 Gamma分布
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