Radiomic-based nonlinear supervised learning classifiers on non-contrast CT to predict functional prognosis in patients with spontaneous intracerebral hematoma

被引:0
作者
Serranoa, E. [1 ]
Moreno, J. [2 ]
Llull, L. [3 ]
Rodriguez, A. [3 ]
Zwanzger, C. [4 ]
Amaro, S. [3 ]
Oleaga, L. [5 ]
Lopez-Ruedae, A. [5 ,6 ]
机构
[1] Hosp Univ Bellvitge, Dept Radiol, Barcelona, Spain
[2] Clin Iribas IRM, Asuncion, Paraguay
[3] Hosp Clin Barcelona, Dept Neurol, Barcelona, Spain
[4] Hosp Mar, Dept Radiol, Barcelona, Spain
[5] Hosp Clin Barcelona, Dept Radiol, Barcelona, Spain
[6] Hosp Clin Barcelona, Serv Informat Clin, Barcelona, Spain
来源
RADIOLOGIA | 2023年 / 65卷 / 06期
关键词
Acute cerebrovascular accident; Cerebral hemorrhage; CT Scanner; X-ray; AI (artificial intelligence); Biomarker; COMPUTED-TOMOGRAPHY MARKERS; HEMORRHAGE; INFORMATION; EXPANSION; IMAGES; SIGN;
D O I
10.1016/j.rx.2023.08.001
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Purpose: To evaluate if nonlinear supervised learning classifiers based on non-contrast cerebral CT can predict functional prognosis at discharge in patients with spontaneous intracerebral hematoma (HIE). 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 non-contrast CT performed within the first 24 hours 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 (95% CI: 0.778-1), 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. (c) 2023 SERAM. Published by Elsevier Espana, S.L.U. All rights reserved.
引用
收藏
页码:519 / 530
页数:12
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