开发一种可解释的人工智能模型,用于预测医院的患者再入院率

P. Chandre, Viresh Vanarote, Moushmee Kuri, A. Uttarkar, Abhishek Dhore, Shafiq Y. Pathan
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引用次数: 0

摘要

本研究的目的是开发一种人工智能模型,该模型可以在出院后的预定时间内正确识别哪些患者最有可能需要再入院。鉴于再入院与较高的医疗成本和较差的患者预后有关;这是医疗保健领域的一个关键问题。然而,这个模型也必须是可解释的,这意味着医疗保健专业人员必须能够理解为什么它做出某些预测背后的基本原理。这对于建立模型的可信度和确保模型得到正确使用至关重要。为了做到这一点,这项研究可能会采用一系列以其可解释性而闻名的机器学习方法,比如决策树或随机森林。此外,研究还可以探讨如何生成特征重要性图或部分依赖图来可视化模型的决策过程。总的来说,通过提高患者的治疗效果,培养对人工智能使用的开放性和信心,这一研究课题有可能对医疗保健产生重大影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing an Explainable AI Model for Predicting Patient Readmissions in Hospitals
The objective of this study is to develop an AI model that can correctly identify which patients are most likely to require hospital readmission within a predetermined window of time after being discharged. Given that readmissions are linked to higher healthcare costs and poorer patient outcomes; this is a crucial problem in healthcare. The model must, nonetheless, also be explicable, which means that healthcare professionals must be able to comprehend the rationale behind why it made certain predictions. This is essential for establishing the model's credibility and making sure it is being used properly. To do this, the study may employ a range of machine learning methods renowned for their interpretability, like decision trees or random forests. Additionally, the study could investigate how to generate feature importance plots or partial dependence plots to visualize the model's decision-making process. Overall, by enhancing patient outcomes and fostering openness and confidence in the use of AI, this research subject has the potential to have a significant impact on healthcare.
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