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一种用于预测垂体腺瘤手术后早期结果的机器学习方法。

A machine learning approach to predict early outcomes after pituitary adenoma surgery.

机构信息

Departments of1Neurosurgery.

2School of Medicine, University of Michigan, Ann Arbor, Michigan.

出版信息

Neurosurg Focus. 2018 Nov 1;45(5):E8. doi: 10.3171/2018.8.FOCUS18268.

Abstract

OBJECTIVEPituitary adenomas occur in a heterogeneous patient population with diverse perioperative risk factors, endocrinopathies, and other tumor-related comorbidities. This heterogeneity makes predicting postoperative outcomes challenging when using traditional scoring systems. Modern machine learning algorithms can automatically identify the most predictive risk factors and learn complex risk-factor interactions using training data to build a robust predictive model that can generalize to new patient cohorts. The authors sought to build a predictive model using supervised machine learning to accurately predict early outcomes of pituitary adenoma surgery.METHODSA retrospective cohort of 400 consecutive pituitary adenoma patients was used. Patient variables/predictive features were limited to common patient characteristics to improve model implementation. Univariate and multivariate odds ratio analysis was performed to identify individual risk factors for common postoperative complications and to compare risk factors with model predictors. The study population was split into 300 training/validation patients and 100 testing patients to train and evaluate four machine learning models using binary classification accuracy for predicting early outcomes.RESULTSThe study included a total of 400 patients. The mean ± SD patient age was 53.9 ± 16.3 years, 59.8% of patients had nonfunctioning adenomas and 84.7% had macroadenomas, and the mean body mass index (BMI) was 32.6 ± 7.8 (58.0% obesity rate). Multivariate odds ratio analysis demonstrated that age < 40 years was associated with a 2.86 greater odds of postoperative diabetes insipidus and that nonobese patients (BMI < 30) were 2.2 times more likely to develop postoperative hyponatremia. Using broad criteria for a poor early postoperative outcome-major medical and early surgical complications, extended length of stay, emergency department admission, inpatient readmission, and death-31.0% of patients met criteria for a poor early outcome. After model training, a logistic regression model with elastic net (LR-EN) regularization best predicted early postoperative outcomes of pituitary adenoma surgery on the 100-patient testing set-sensitivity 68.0%, specificity 93.3%, overall accuracy 87.0%. The receiver operating characteristic and precision-recall curves for the LR-EN model had areas under the curve of 82.7 and 69.5, respectively. The most important predictive variables were lowest perioperative sodium, age, BMI, highest perioperative sodium, and Cushing's disease.CONCLUSIONSEarly postoperative outcomes of pituitary adenoma surgery can be predicted with 87% accuracy using a machine learning approach. These results provide insight into how predictive modeling using machine learning can be used to improve the perioperative management of pituitary adenoma patients.

摘要

目的 垂体腺瘤患者具有异质性,围手术期存在多种危险因素、内分泌疾病和其他与肿瘤相关的合并症。这种异质性使得使用传统评分系统预测术后结果具有挑战性。现代机器学习算法可以自动识别最具预测性的危险因素,并使用训练数据学习复杂的危险因素相互作用,从而构建一个稳健的预测模型,可以推广到新的患者群体。作者试图使用监督机器学习构建一个预测模型,以准确预测垂体腺瘤手术的早期结果。

方法 该研究回顾性纳入了 400 例连续垂体腺瘤患者。患者变量/预测因素仅限于常见的患者特征,以提高模型的实施效果。使用单变量和多变量比值比分析来确定常见术后并发症的个体危险因素,并将危险因素与模型预测因素进行比较。研究人群分为 300 例训练/验证患者和 100 例测试患者,使用二元分类准确性来训练和评估四种机器学习模型,以预测早期结果。

结果 该研究共纳入 400 例患者。患者的平均年龄为 53.9 ± 16.3 岁,59.8%的患者为无功能腺瘤,84.7%的患者为大腺瘤,平均体重指数(BMI)为 32.6 ± 7.8(58.0%为肥胖率)。多变量比值比分析表明,年龄<40 岁与术后尿崩症的几率增加 2.86 倍相关,非肥胖患者(BMI<30)发生术后低钠血症的几率增加 2.2 倍。使用广义标准来评估不良的早期术后结果——主要医疗和早期手术并发症、延长住院时间、急诊就诊、再次住院和死亡——31.0%的患者符合不良早期结果的标准。在模型训练后,基于弹性网络(LR-EN)正则化的逻辑回归模型在 100 例测试患者中对垂体腺瘤手术的早期术后结果具有最佳预测能力——敏感性为 68.0%,特异性为 93.3%,总准确率为 87.0%。LR-EN 模型的受试者工作特征和精度-召回曲线的曲线下面积分别为 82.7 和 69.5。最重要的预测变量是最低围手术期钠、年龄、BMI、最高围手术期钠和库欣病。

结论 使用机器学习方法,垂体腺瘤手术的早期术后结果可以达到 87%的准确率。这些结果为如何使用机器学习进行预测建模以改善垂体腺瘤患者的围手术期管理提供了思路。

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