基于放射组学的非线性监督学习分类器在非对比CT上预测自发性脑内血肿患者的功能预后

E. Serrano , J. Moreno , L. Llull , A. Rodríguez , C. Zwanzger , S. Amaro , L. Oleaga , A. López-Rueda
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引用次数: 0

摘要

目的探讨基于非对比CT的非线性监督学习分类器对自发性脑内血肿患者出院时功能预后的预测作用。方法回顾性、单中心、观察分析2016年1月至2018年4月经非对比CT确诊的自发性脑内血肿患者。纳入HIE患者 > 18岁及症状出现后24 小时内行TCCSC的患者。排除了继发性自发性脑内血肿和放射组学变量不可用的患者。收集临床、人口统计学和入院变量。出院时根据改良Rankin量表(mRS)将患者分为预后良好(mRS 0 ~ 2)和预后不良(mRS 3 ~ 6)。对每个自发性脑内血肿进行人工分割后,获得放射组学变量。样本分为训练和测试组和验证组(分别为70 - 30%)。采用不同的变量选择和降维方法,采用不同的算法构建模型。对训练和测试队列进行分层10倍交叉验证,计算平均曲线下面积(AUC)。一旦对模型进行训练,计算每个模型的敏感性,以预测验证队列中出院时的功能预后。结果对105例自发性脑内血肿患者进行了分析。为每位患者评估105个放射组学变量。P-SVM、KNN-E和RF-10算法结合方差分析变量选择方法在训练和测试队列中表现最好(AUC分别为0.798、0.752和0.742)。在验证队列中,这些模型的预测灵敏度为0.897(0.778−1;95%CI),预测出院时功能预后不良的假阴性率为0%。结论基于放射组学的非线性监督学习分类器是一种很有前途的诊断工具,可用于预测HIE患者出院时的功能结局,其假阴性率较低,尽管仍需要更大和平衡的样本来开发和提高其性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Radiomic-based nonlinear supervised learning classifiers on non-contrast CT to predict functional prognosis in patients with spontaneous intracerebral hematoma

Purpose

To evaluate if nonlinear supervised learning classifiers based on non-contrast CT can predict functional prognosis at discharge in patients with spontaneous intracerebral hematoma.

Methods

Retrospective, single-center, observational analysis of patients with a diagnosis of spontaneous intracerebral hematoma confirmed by non-contrast CT between January 2016 and April 2018. Patients with HIE > 18 years and with TCCSC performed within the first 24 h of symptom onset were included. Patients with secondary spontaneous intracerebral hematoma and in whom radiomic variables were not available were excluded. Clinical, demographic and admission variables were collected. Patients were classified according to the Modified Rankin Scale (mRS) at discharge into good (mRS 0−2) and poor prognosis (mRS 3–6). After manual segmentation of each spontaneous intracerebral hematoma, the radiomics variables were obtained. The sample was divided into a training and testing cohort and a validation cohort (70−30% respectively). Different methods of variable selection and dimensionality reduction were used, and different algorithms were used for model construction. Stratified 10-fold cross-validation were performed on the training and testing cohort and the mean area under the curve (AUC) were calculated. Once the models were trained, the sensitivity of each was calculated to predict functional prognosis at discharge in the validation cohort.

Results

105 patients with spontaneous intracerebral hematoma were analyzed. 105 radiomic variables were evaluated for each patient. P-SVM, KNN-E and RF-10 algorithms, in combination with the ANOVA variable selection method, were the best performing classifiers in the training and testing cohort (AUC 0.798, 0.752 and 0.742 respectively). The predictions of these models, in the validation cohort, had a sensitivity of 0.897 (0.778−1;95%CI), with a false-negative rate of 0% for predicting poor functional prognosis at discharge.

Conclusion

The use of radiomics-based nonlinear supervised learning classifiers are a promising diagnostic tool for predicting functional outcome at discharge in HIE patients, with a low false negative rate, although larger and balanced samples are still needed to develop and improve their performance.

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