Understanding Cancer Caregiving and Predicting Burden: An Analytics and Machine Learning Approach.

AMIA ... Annual Symposium proceedings. AMIA Symposium Pub Date : 2024-01-11 eCollection Date: 2023-01-01
Armin Abazari, Samir Chatterjee, Md Moniruzzaman
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Abstract

Cancer caregivers are often informal family members who may not be prepared to adequately meet the needs of patients and often experience high stress along with significant physical, emotional, and financial burdens. Accurate prediction of caregiver's burden level is highly valuable for early intervention and support. In this study, we used several machine learning approaches to build prediction models from the National Alliance for Caregiving/AARP dataset. We performed data cleansing and imputation on the raw data to give us a working dataset of cancer caregivers. Then a series of feature selection methods were used to identify predictive risk factors for burden level. Using supervised machine learning classifiers, we achieved reasonably good prediction performance (Accuracy ∼ 0.94; AUC ∼ 0.97; F1∼ 0.93). We identify a small set of 15 features that are strong predictors of burden and can be used to build Clinical Decision Support Systems.

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了解癌症护理并预测负担:分析和机器学习方法。
癌症照护者通常是非正式家庭成员,他们可能没有做好充分准备来满足患者的需求,往往承受着巨大的压力以及身体、情感和经济负担。准确预测照顾者的负担水平对于早期干预和支持非常有价值。在本研究中,我们使用了多种机器学习方法,从全国护理联盟/美国退休人员协会数据集中建立预测模型。我们对原始数据进行了数据清理和估算,从而得到了一个有效的癌症护理人员数据集。然后,我们使用一系列特征选择方法来确定负担水平的预测风险因素。使用有监督的机器学习分类器,我们取得了相当不错的预测效果(准确率 ∼ 0.94;AUC ∼ 0.97;F1∼ 0.93)。我们确定了一小组 15 个特征,它们是负担的强预测因子,可用于构建临床决策支持系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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