Thabarsa Phattanun, Inkeaw Papangkorn, Madla Chakri, Vuthiwong Withawat, Unsrisong Kittisak, Jitmahawong Natipat, Sudsang Thanwa, Angkurawaranon Chaisiri, Angkurawaranon Salita
Master's Degree Program in Data Science, Faculty of Engineering, Chiang Mai University, Chiang Mai, 50200, Thailand.
Data Science Research Center, Department of Computer Science, Faculty of Science, Chiang Mai University, Chiang Mai, 50200, Thailand.
Neuroradiology. 2025 Feb;67(2):339-349. doi: 10.1007/s00234-024-03481-1. Epub 2024 Oct 5.
To assess the efficacy of radiomics features extracted from non-contrast computed tomography (NCCT) scans in differentiating multiple etiologies of spontaneous intracerebral hemorrhage (ICH).
CT images and clinical data from 141 ICH patients from 2010 to 2022 were collected. The cohort comprised primary (n = 57), tumorous (n = 46), and vascular malformation-related ICH (n = 38). Radiomics features were extracted from the initial brain NCCT scans and identified potential features using mutual information. A hierarchical classification with AdaBoost classifiers was employed to classify the multiple etiologies of ICH. Age of the patient and ICH's location were examined alongside radiomics features. The accuracy, area under the curve (AUC), sensitivity, and specificity were used to evaluate classification performance.
The proposed method achieved an accuracy of 0.79. For identifying primary ICH, the model achieved a sensitivity of 0.86 and specificity of 0.87. Meanwhile, the sensitivity and specificity for identifying tumoral causes were 0.78 and 0.93, respectively. For vascular malformation, the model reached a sensitivity and specificity of 0.72 and 0.89, respectively. The AUCs for primary, tumorous, and vascular malformation were 0.86, 0.85, and 0.82, respectively. The findings further highlight the importance of texture-based variables in ICH classification. The age and location of the ICH can enhance the classification performance.
The use of a machine learning model with radiomics features has the potential in classifying the three types of non-traumatic ICH. It may help the radiologist decide on an appropriate further examination plan to arrive at a correct diagnosis.
评估从非增强计算机断层扫描(NCCT)中提取的影像组学特征在鉴别自发性脑出血(ICH)多种病因方面的疗效。
收集了2010年至2022年141例ICH患者的CT图像和临床数据。该队列包括原发性(n = 57)、肿瘤性(n = 46)和血管畸形相关的ICH(n = 38)。从初始脑部NCCT扫描中提取影像组学特征,并使用互信息识别潜在特征。采用带有AdaBoost分类器的分层分类法对ICH的多种病因进行分类。将患者年龄和ICH位置与影像组学特征一起进行研究。使用准确率、曲线下面积(AUC)、敏感性和特异性来评估分类性能。
所提出的方法准确率达到0.79。对于鉴别原发性ICH,该模型的敏感性为0.86,特异性为0.87。同时,鉴别肿瘤性病因的敏感性和特异性分别为0.78和0.93。对于血管畸形,该模型的敏感性和特异性分别达到0.72和0.89。原发性、肿瘤性和血管畸形的AUC分别为0.86、0.85和0.82。这些发现进一步凸显了基于纹理的变量在ICH分类中的重要性。ICH的年龄和位置可提高分类性能。
使用具有影像组学特征的机器学习模型在对三种非创伤性ICH类型进行分类方面具有潜力。它可能有助于放射科医生确定合适的进一步检查方案以做出正确诊断。