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首页> 外文期刊>JMIR Medical Informatics >Prediction of Prolonged Length of Hospital Stay After Cancer Surgery Using Machine Learning on Electronic Health Records: Retrospective Cross-sectional Study
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Prediction of Prolonged Length of Hospital Stay After Cancer Surgery Using Machine Learning on Electronic Health Records: Retrospective Cross-sectional Study

机译:用机器学习在电子健康记录中预测癌症手术后长度的预测:回顾性横截面研究

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Background Postoperative length of stay is a key indicator in the management of medical resources and an indirect predictor of the incidence of surgical complications and the degree of recovery of the patient after cancer surgery. Recently, machine learning has been used to predict complex medical outcomes, such as prolonged length of hospital stay, using extensive medical information. Objective The objective of this study was to develop a prediction model for prolonged length of stay after cancer surgery using a machine learning approach. Methods In our retrospective study, electronic health records (EHRs) from 42,751 patients who underwent primary surgery for 17 types of cancer between January 1, 2000, and December 31, 2017, were sourced from a single cancer center. The EHRs included numerous variables such as surgical factors, cancer factors, underlying diseases, functional laboratory assessments, general assessments, medications, and social factors. To predict prolonged length of stay after cancer surgery, we employed extreme gradient boosting classifier, multilayer perceptron, and logistic regression models. Prolonged postoperative length of stay for cancer was defined as bed-days of the group of patients who accounted for the top 50% of the distribution of bed-days by cancer type. Results In the prediction of prolonged length of stay after cancer surgery, extreme gradient boosting classifier models demonstrated excellent performance for kidney and bladder cancer surgeries (area under the receiver operating characteristic curve [AUC] 0.85). A moderate performance (AUC 0.70-0.85) was observed for stomach, breast, colon, thyroid, prostate, cervix uteri, corpus uteri, and oral cancers. For stomach, breast, colon, thyroid, and lung cancers, with more than 4000 cases each, the extreme gradient boosting classifier model showed slightly better performance than the logistic regression model, although the logistic regression model also performed adequately. We identified risk variables for the prediction of prolonged postoperative length of stay for each type of cancer, and the importance of the variables differed depending on the cancer type. After we added operative time to the models trained on preoperative factors, the models generally outperformed the corresponding models using only preoperative variables. Conclusions A machine learning approach using EHRs may improve the prediction of prolonged length of hospital stay after primary cancer surgery. This algorithm may help to provide a more effective allocation of medical resources in cancer surgery.
机译:背景技术术后住院时间是管理医疗资源管理的关键指标和手术并发症发生率的间接预测因子以及癌症手术后患者的恢复程度。最近,机器学习已被用来预测复杂的医疗结果,例如使用广泛的医疗信息,例如长期的住院时间。目的本研究的目的是利用机器学习方法在癌症手术后长时间保持预测模型。方法在我们的回顾性研究中,从2000年1月1日至2017年1月1日至2017年12月31日期间接受了17种癌症的初级手术的42,751名患者的电子健康记录(EHRS)是来自单一癌症中心的。 EHRS包括许多变量,如外科因素,癌症因素,潜在疾病,功能实验室评估,一般评估,药物和社会因素。为了预测癌症手术后延长的逗留时间,我们采用了极端梯度升压分类器,多层的感知和逻辑回归模型。癌症的延长术后长度被定义为患者患者的床天,患有癌症类型的床天前50%的患者。结果预测癌症手术后长度延长,极端梯度升压分类器模型表现出优异的肾和膀胱癌手术的性能(接收器下的区域下的区域,操作特性曲线[AUC]> 0.85)。胃,乳腺,结肠,甲状腺,前列腺,子宫子宫,子宫和口腔癌,观察到中度表现(AUC 0.70-0.85)。对于胃,乳房,结肠,甲状腺和肺癌,每个患者超过4000例,极端梯度升压分类器模型表现出比Logistic回归模型的性能稍微好,尽管逻辑回归模型也充分执行。我们确定了对每种类型癌症的延长术后长度预测的风险变量,并且变量的重要性根据癌症类型而不同。在我们添加了在术前因子上培训的模型的操作时间之后,模型通常仅使用术前变量来表现相应的模型。结论使用EHRS的机器学习方法可以改善原发性癌症手术后长期住院时间的预测。该算法可以有助于提供癌症手术中的更有效地分配医疗资源。

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