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Different models for prediction of radical cystectomy postoperative complications and care pathways

机译:用于预测激进膀胱切除术后并发症和护理途径的不同模型

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Background: Radical cystectomy for bladder cancer has one of the highest rates of morbidity among urologic surgery, but the ability to predict postoperative complications remains poor. Our study objective was to create machine learning models to predict complications and factors leading to extended length of hospital stay and discharge to a higher level of care after radical cystectomy. Methods: Using the American College of Surgeons National Surgical Quality Improvement Program, peri-operative adverse outcome variables for patients undergoing elective radical cystectomy for bladder cancer from 2005 to 2016 were extracted. Variables assessed include occurrence of minor, infectious, serious, or any adverse events, extended length of hospital stay, and discharge to higher-level care. To develop predictive models of radical cystectomy complications, we fit generalized additive model (GAM), least absolute shrinkage and selection operator (LASSO) logistic, neural network, and random forest models to training data using various candidate predictor variables. Each model was evaluated on the test data using receiver operating characteristic curves. Results: A total of 7557 patients were identified who met the inclusion criteria, and 2221 complications occurred. LASSO logistic models demonstrated the highest area under curve for predicting any complications (0.63), discharge to a higher level of care (0.75), extended length of stay (0.68), and infectious (0.62) adverse events. This was comparable with random forest in predicting minor (0.60) and serious (0.63) adverse events. Conclusions: Our models perform modestly in predicting radical cystectomy complications, highlighting both the complex cystectomy process and the limitations of large healthcare datasets. Identifying the most important variable leading to each type of adverse event may allow for further strategies to model cystectomy complications and target optimization of modifiable variables pre-operative to reduce postoperative adverse events.
机译:背景:膀胱癌的自由基膀胱切除术具有泌尿科手术中的最高发病率之一,但预测术后并发症的能力仍然差。我们的学习目标是创造机器学习模型,以预测在激进膀胱切除术后延长医院的延长和放电的并发症和因素。方法:采用美国外科医生国家外科院校,提取2005至2016年接受选修自由基膀胱切除术治疗膀胱癌的患者的Peri术后不良结果。评估的变量包括发生轻微,传染性,严重或任何不良事件,延长医院住宿时间,并向更高级别的护理排放。开发自由基膀胱切除术并发症的预测模型,我们将广义添加剂模型(GAM),最小绝对收缩和选择操作员(套索)物流,神经网络和随机林模型用于使用各种候选预测变量来训练数据。使用接收器操作特性曲线对测试数据进行评估每个模型。结果:鉴定了7557名患者均符合纳入标准,并发生了2221名并发症。套索物流模型显示曲线下的最高面积,用于预测任何并发症(0.63),放电到更高水平的护理(0.75),延长的逗留时间(0.68),传染(0.62)不良事件。这与预测次要(0.60)和严重(0.63)不良事件的随机林相当。结论:我们的模型在预测激进膀胱切除术并发症时谦虚地表演,突出了复杂的膀胱切除术方法和大型医疗数据集的局限性。识别导致每种不良事件的最重要变量可能允许进一步策略模拟膀胱切除术并发症的策略和可修改的变量预先操作的可修改的变量,以减少术后不良事件。

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