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Use of a Machine Learning Program to Correctly Triage Incoming Text Messaging Replies From a Cardiovascular Text–Based Secondary Prevention Program: Feasibility Study

机译:使用机器学习程序来正确地从基于心血管文本的二级预防计划进行分类传入的文本消息回复:可行性研究

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Background SMS text messaging programs are increasingly being used for secondary prevention, and have been shown to be effective in a number of health conditions including cardiovascular disease. SMS text messaging programs have the potential to increase the reach of an intervention, at a reduced cost, to larger numbers of people who may not access traditional programs. However, patients regularly reply to the SMS text messages, leading to additional staffing requirements to monitor and moderate the patients’ SMS text messaging replies. This additional staff requirement directly impacts the cost-effectiveness and scalability of SMS text messaging interventions. Objective This study aimed to test the feasibility and accuracy of developing a machine learning (ML) program to triage SMS text messaging replies (ie, identify which SMS text messaging replies require a health professional review). Methods SMS text messaging replies received from 2 clinical trials were manually coded (1) into “Is staff review required?” (binary response of yes/no); and then (2) into 12 general categories. Five ML models (Na?ve Bayes, OneVsRest, Random Forest Decision Trees, Gradient Boosted Trees, and Multilayer Perceptron) and an ensemble model were tested. For each model run, data were randomly allocated into training set (2183/3118, 70.01%) and test set (935/3118, 29.98%). Accuracy for the yes/no classification was calculated using area under the receiver operating characteristics curve (AUC), false positives, and false negatives. Accuracy for classification into 12 categories was compared using multiclass classification evaluators. Results A manual review of 3118 SMS text messaging replies showed that 22.00% (686/3118) required staff review. For determining need for staff review, the Multilayer Perceptron model had highest accuracy (AUC 0.86; 4.85% false negatives; and 4.63% false positives); with addition of heuristics (specified keywords) fewer false negatives were identified (3.19%), with small increase in false positives (7.66%) and AUC 0.79. Application of this model would result in 26.7% of SMS text messaging replies requiring review (true + false positives). The ensemble model produced the lowest false negatives (1.43%) at the expense of higher false positives (16.19%). OneVsRest was the most accurate (72.3%) for the 12-category classification. Conclusions The ML program has high sensitivity for identifying the SMS text messaging replies requiring staff input; however, future research is required to validate the models against larger data sets. Incorporation of an ML program to review SMS text messaging replies could significantly reduce staff workload, as staff would not have to review all incoming SMS text messages. This could lead to substantial improvements in cost-effectiveness, scalability, and capacity of SMS text messaging–based interventions.
机译:背景技术SMS越来越多地用于二次预防,并且已被证明在包括心血管疾病的许多健康状况中有效。 SMS短信程序有可能以降低的成本增加干预率,以减少可能无法访问传统计划的更多人。但是,患者定期回复SMS短信,导致额外的人员配置要求监测和中度患者的短信发短信回复。此额外的员工要求直接影响SMS文本消息传递干预的成本效益和可扩展性。目的本研究旨在测试将机器学习(ML)程序开发的可行性和准确性,以进行分类SMS文本消息传递回复(即确定哪些短信消息传递答复需要健康专业审查)。方法从2次临床试验中收到的SMS文本消息答复手动编码(1)进入“必填人员审查?” (是/否的二进制响应);然后(2)进入12个一般类别。测试了五毫升型号(Na?ve Bayes,OneVsrest,随机森林决策树,渐变增强树木和多层射击树)和集合模型。对于每个模型运行,数据被随机分配到训练集(2183/3118,70.01%)和测试集(935/3118,29.98%)中。使用接收器操作特性曲线(AUC),误报和假底部的区域计算是/否分类的准确性。使用多款分类评估符进行比较分类为12类的准确性。结果3118短信发短信回复的手动审查显示,22.00%(686/3118)所需的工作人员审查。为了确定需要员工审查,多层的Perceptron模型具有最高的精度(AUC 0.86; 4.85%的假阴性;和4.63%的误报);添加了启发式(指定关键词),鉴定了较少的假阴性(3.19%),误报的增加(7.66%)和AUC 0.79。此模型的应用将导致26.7%的SMS短信回复需要审查(真实+误报)。该集合模型以较高的误报(16.19%)为牺牲最低的假阴性(1.43%)产生了最低的假底片(1.43%)。 OneVSRest是12类分类最准确的(72.3%)。结论ML计划对确定需要员工投入的短信消息回复具有很高的灵敏度;但是,未来的研究是针对较大数据集的验证模型。纳入ML程序以审查SMS短信回复可能会显着减少员工工作量,因为工作人员不必审查所有传入的SMS短信。这可能导致短信效果,可扩展性和基于短信的干预措施的成本效益,可扩展性和能力的大量改进。

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