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Computational Barthel Index: an automated tool for assessing and predicting activities of daily living among nursing home patients

机译:计算Barthel指数:用于评估和预测养老院患者日常生活活动的自动化工具

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Assessment of functional ability, including activities of daily living (ADLs), is a manual process completed by skilled health professionals. In the presented research, an automated decision support tool, the Computational Barthel Index Tool (CBIT), was constructed that can automatically assess and predict probabilities of current and future ADLs based on patients’ medical history. The data used to construct the tool include the demographic information, inpatient and outpatient diagnosis codes, and reported disabilities of 181,213 residents of the Department of Veterans Affairs’ (VA) Community Living Centers. Supervised machine learning methods were applied to construct the CBIT. Temporal information about times from the first and the most recent occurrence of diagnoses was encoded. Ten-fold cross-validation was used to tune hyperparameters, and independent test sets were used to evaluate models using AUC, accuracy, recall and precision. Random forest achieved the best model quality. Models were calibrated using isotonic regression. The unabridged version of CBIT uses 578 patient characteristics and achieved average AUC of 0.94 (0.93–0.95), accuracy of 0.90 (0.89–0.91), precision of 0.91 (0.89–0.92), and recall of 0.90 (0.84–0.95) when re-evaluating patients. CBIT is also capable of predicting ADLs up to one year ahead, with accuracy decreasing over time, giving average AUC of 0.77 (0.73–0.79), accuracy of 0.73 (0.69–0.80), precision of 0.74 (0.66–0.81), and recall of 0.69 (0.34–0.96). A simplified version of CBIT with 50 top patient characteristics reached performance that does not significantly differ from full CBIT. Discharge planners, disability application reviewers and clinicians evaluating comparative effectiveness of treatments can use CBIT to assess and predict information on functional status of patients.
机译:对功能能力的评估,包括日常生活活动(ADL),是熟练卫生专业人员完成的手动过程。在本研究中,构建了一种自动决策支持工具,计算条形标准工具(CBit),可以自动评估和预测基于患者的病史的当前和未来ADL的概率。用于构建该工具的数据包括人口统计信息,住院患者和门诊诊断代码,并报告了退伍军人事务部(VA)社区生活中心的181,213名居民的残疾。监督机器学习方法应用于构建Cbit。从第一和最近发生诊断发生的时间信息是编码的。十倍的交叉验证用于调整超级参数,并且使用独立的测试集来评估使用AUC,准确性,召回和精度的模型。随机森林实现了最佳的模型质量。使用等渗回归校准模型。 Cbit未制作的Cbit版本使用578名患者特性,实现平均AUC为0.94(0.93-0.95),精度为0.90(0.89-0.91),精度为0.91(0.89-0.92),再调用0.90(0.84-0.95) - 尊重患者。 CBET还能够预测未来一年的ADL,随着时间的推移,精度降低,均为0.77(0.73-0.79)的平均AUC,精度为0.73(0.69-0.80),精度为0.74(0.66-0.81),并回忆0.69(0.34-0.96)。具有50个顶层患者特性的CBit的简化版本达到了与全CBit显着不同的性能。排放规划师,残疾申请审阅者和评估治疗的比较有效性的临床医生可以使用Cbit评估和预测患者功能状况的信息。

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