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预测酒精依赖治疗结果:临床心理学家与“训练有素”的机器学习模型的前瞻性比较研究。

Predicting alcohol dependence treatment outcomes: a prospective comparative study of clinical psychologists versus 'trained' machine learning models.

作者信息

Symons Martyn, Feeney Gerald F X, Gallagher Marcus R, Young Ross McD, Connor Jason P

机构信息

Alcohol and Drug Assessment Unit, Princess Alexandra Hospital, Brisbane, Australia.

Discipline of Psychiatry, The University of Queensland, Brisbane, Australia.

出版信息

Addiction. 2020 Nov;115(11):2164-2175. doi: 10.1111/add.15038. Epub 2020 Mar 26.

Abstract

BACKGROUND AND AIMS

Clinical staff are typically poor at predicting alcohol dependence treatment outcomes. Machine learning (ML) offers the potential to model complex clinical data more effectively. This study tested the predictive accuracy of ML algorithms demonstrated to be effective in predicting alcohol dependence outcomes, compared with clinical judgement and traditional linear regression.

DESIGN

Prospective study. ML models were trained on 1016 previously treated patients (training-set) who attended a hospital-based alcohol and drug clinic. ML models (n = 27), clinical psychologists (n = 10) and a 'traditional' logistic regression model (n = 1) predicted treatment outcome during the initial treatment session of an alcohol dependence programme.

SETTING

A 12-week cognitive behavioural therapy (CBT)-based abstinence programme for alcohol dependence in a hospital-based alcohol and drug clinic in Australia.

PARTICIPANTS

Prospective predictions were made for 220 new patients (test-set; 70.91% male, mean age = 35.78 years, standard deviation = 9.19). Sixty-nine (31.36%) patients successfully completed treatment.

MEASUREMENTS

Treatment success was the primary outcome variable. The cross-validated training-set accuracy of ML models was used to determine optimal parameters for selecting models for prospective prediction. Accuracy, sensitivity, specificity, area under the receiver operator curve (AUC), Brier score and calibration curves were calculated and compared across predictions.

FINDINGS

The mean aggregate accuracy of the ML models (63.06%) was higher than the mean accuracy of psychologist predictions (56.36%). The most accurate ML model achieved 70% accuracy, as did logistic regression. Both were more accurate than psychologists (P < 0.05) and had superior calibration. The high specificity for the selected ML (79%) and logistic regression (90%) meant they were significantly (P < 0.001) more effective than psychologists (50%) at correctly identifying patients whose treatment was unsuccessful. For ML and logistic regression, high specificity came at the expense of sensitivity (26 and 31%, respectively), resulting in poor prediction of successful patients.

CONCLUSIONS

Machine learning models and logistic regression appear to be more accurate than psychologists at predicting treatment outcomes in an abstinence programme for alcohol dependence, but sensitivity is low.

摘要

背景与目的

临床工作人员通常不善于预测酒精依赖治疗的结果。机器学习(ML)有潜力更有效地对复杂的临床数据进行建模。本研究测试了已证明在预测酒精依赖结果方面有效的ML算法的预测准确性,并与临床判断和传统线性回归进行比较。

设计

前瞻性研究。ML模型在1016名曾在一家医院酒精与药物诊所接受治疗的患者(训练集)上进行训练。ML模型(n = 27)、临床心理学家(n = 10)和一个“传统”逻辑回归模型(n = 1)在酒精依赖项目的初始治疗阶段预测治疗结果。

地点

澳大利亚一家医院酒精与药物诊所内基于12周认知行为疗法(CBT)的酒精依赖戒酒项目。

参与者

对220名新患者(测试集;70.91%为男性,平均年龄 = 35.78岁,标准差 = 9.19)进行前瞻性预测。69名(31.36%)患者成功完成治疗。

测量

治疗成功是主要结局变量。ML模型的交叉验证训练集准确性用于确定选择用于前瞻性预测的模型的最佳参数。计算并比较预测结果的准确性、敏感性、特异性、受试者工作特征曲线下面积(AUC)、布里尔评分和校准曲线。

结果

ML模型的平均总准确率(63.06%)高于心理学家预测的平均准确率(56.36%)。最准确的ML模型和逻辑回归的准确率均达到70%。两者都比心理学家的预测更准确(P < 0.05)且校准性更好。所选ML(79%)和逻辑回归(90%)的高特异性意味着它们在正确识别治疗未成功的患者方面比心理学家(50%)显著更有效(P < 0.001)。对于ML和逻辑回归,高特异性是以敏感性为代价的(分别为26%和31%),导致对成功患者的预测较差。

结论

在酒精依赖戒酒项目中,机器学习模型和逻辑回归在预测治疗结果方面似乎比心理学家更准确,但敏感性较低。

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