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Predicting ophthalmic clinic non-attendance using machine learning

机译:使用机器学习预测眼科门诊缺勤率

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Background: Clinic non-attendance is associated with poorer health outcomes and costs $29m per annum. Initiatives to improve attendance typically involve expensive and ineffective brute-force strategies. Purpose: To develop a predictive model for ophthalmic-clinic attendance. Methods: Nationwide ophthalmology clinic data was aggregated for analysis. Variables included patient age, District Health Board (DHB), ethnicity, clinic appointment type, sex and deprivation quintile. Feature engineering of the training dataset was completed with binary encoding of predictive categorical variables. Age was the only numerical feature. Logistic regression models were evaluated with performance measures of area under the curve (AUC), sensitivity, specificity and precision. Model weighting was adjusted to account for the highly imbal-anced dataset. Ten-fold cross validation was used. Results: Data included 3.1 million clinic appointments with 5.9 non-attendance rate. Raw data was divided for model training (90) and testing (10) to enable a robust validation framework. An overall model sensitivity of 73, specificity of 69, AUC of 0.777 and precision of 12.8 was achieved. Precision increased significantly when the model was constrained to DHBs with modest increases in non-attendance rates. A DHB with 9.9 non-attendance achieved precision of up to 22. Conclusion: It is possible to use machine learning algorithms to predict clinic non-attendance. The AUC confirms this model enables clinically useful predictions of clinic attendance. The model AUC in the current study outperforms most previously published predictive models of attendance in the literature. This level of discrimination is high enough to be used in advanced scheduling methods and targeted public health interventions.
机译:背景:诊所不出勤与较差的健康状况有关,每年花费2900万美元。提高出勤率的举措通常涉及昂贵且无效的暴力策略。目的:开发眼科门诊就诊率的预测模型。方法:汇总全国眼科门诊数据进行分析。变量包括患者年龄、地区卫生委员会 (DHB)、种族、诊所预约类型、性别和剥夺五分位数。通过预测分类变量的二进制编码完成训练数据集的特征工程。年龄是唯一的数字特征。使用曲线下面积 (AUC)、灵敏度、特异性和精密度的性能指标评估 Logistic 回归模型。对模型权重进行了调整,以考虑高度不平衡的数据集。使用了十倍交叉验证。结果:数据包括 310 万次门诊预约,未就诊率为 5.9%。原始数据被划分为模型训练(90%)和测试(10%),以实现强大的验证框架。总体模型灵敏度为73%,特异性为69%,AUC为0.777,精密度为12.8%。当模型被限制在非出勤率适度增加的 DHB 时,精度显着提高。9.9% 的 DHB 缺勤率高达 22%。结论:可以使用机器学习算法来预测门诊缺勤率。AUC 证实该模型能够对临床上有用的门诊就诊率预测。当前研究中的模型 AUC 优于文献中大多数先前发表的出勤预测模型。这种歧视程度足够高,可以用于先进的调度方法和有针对性的公共卫生干预措施。

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