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Machine-learning prediction of cancer survival: a retrospective study using electronic administrative records and a cancer registry

机译:机器学习预测癌症生存:使用电子管理记录和癌症登记系统的回顾性研究

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Objectives Using the prediction of cancer outcome as a model, we have tested the hypothesis that through analysing routinely collected digital data contained in an electronic administrative record (EAR), using machine-learning techniques, we could enhance conventional methods in predicting clinical outcomes. Setting A regional cancer centre in Australia. Participants Disease-specific data from a purpose-built cancer registry (Evaluation of Cancer Outcomes (ECO)) from 869 patients were used to predict survival at 6, 12 and 24?months. The model was validated with data from a further 94 patients, and results compared to the assessment of five specialist oncologists. Machine-learning prediction using ECO data was compared with that using EAR and a model combining ECO and EAR data. Primary and secondary outcome measures Survival prediction accuracy in terms of the area under the receiver operating characteristic curve (AUC). Results The ECO model yielded AUCs of 0.87 (95% CI 0.848 to 0.890) at 6?months, 0.796 (95% CI 0.774 to 0.823) at 12?months and 0.764 (95% CI 0.737 to 0.789) at 24?months. Each was slightly better than the performance of the clinician panel. The model performed consistently across a range of cancers, including rare cancers. Combining ECO and EAR data yielded better prediction than the ECO-based model (AUCs ranging from 0.757 to 0.997 for 6?months, AUCs from 0.689 to 0.988 for 12?months and AUCs from 0.713 to 0.973 for 24?months). The best prediction was for genitourinary, head and neck, lung, skin, and upper gastrointestinal tumours. Conclusions Machine learning applied to information from a disease-specific (cancer) database and the EAR can be used to predict clinical outcomes. Importantly, the approach described made use of digital data that is already routinely collected but underexploited by clinical health systems.
机译:目的我们以预测癌症结局为模型,验证了以下假设:通过使用机器学习技术分析电子行政记录(EAR)中包含的常规收集的数字数据,可以增强预测临床结局的常规方法。在澳大利亚设立地区性癌症中心。研究对象来自869例患者的特定癌症登记数据(癌症结果评估(ECO))中的疾病特定数据用于预测6、12和24个月的存活率。该模型已用来自其他94位患者的数据进行了验证,并将结果与​​五位专职肿瘤科医生的评估进行了比较。将使用ECO数据的机器学习预测与使用EAR以及结合ECO和EAR数据的模型进行了比较。主要和次要结果测量生存预测准确性,以接收器工作特征曲线(AUC)下的面积表示。结果ECO模型在6个月时产生的AUC为0.87(95%CI为0.848至0.890),在12个月时为0.796(95%CI为0.774至0.823),在24个月时为0.764(95%CI为0.737至0.789)。每个都比临床医师小组的表现略好。该模型在多种癌症(包括罕见癌症)中的表现均一致。与基于ECO的模型相比,结合ECO和EAR数据可获得更好的预测(6个月的AUC范围从0.757至0.997,12个月的AUC范围从0.689至0.988,24个月的AUC范围从0.713至0.973)。最好的预测是泌尿生殖道,头颈部,肺,皮肤和上消化道肿瘤。结论机器学习应用于来自疾病特定(癌症)数据库和EAR的信息,可用于预测临床结果。重要的是,所描述的方法利用了已经常规收集但临床卫生系统未充分利用的数字数据。

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