Batur Halitcan, Mendi Bokebatur Ahmet Rasit, Cay Nurdan
Department of PediatricRadiology, Ankara City Hospital, Ankara, Turkey.
Department of Radiology, Nigde OmerHalisdemir University Education and ResearchHospital, Nigde, Turkey.
Pol J Radiol. 2023 Apr 11;88:e194-e202. doi: 10.5114/pjr.2023.127055. eCollection 2023.
Contrary to the self-limiting nature of reversible bone marrow lesions, irreversible bone marrow lesions require early surgical intervention to prevent further morbidity. Thus, early discrimination of irreversible pathology is necessitated. The purpose of this study is to evaluate the efficacy of radiomics and machine learning regarding this topic.
A database was scanned for patients who had undergone MRI of the hip for differential diagnosis of bone marrow lesions and had had follow-up images acquired within 8 weeks after the first imaging. Images that showed resolution of oedema were included in the reversible group. The remainders that showed progression into characteristic signs of osteonecrosis were included in the irreversible group. Radiomics was performed on the first MR images, calculating first- and second-order parameters. Support vector machine and random forest classifiers were performed using these parameters.
Thirty-seven patients (seventeen osteonecrosis) were included. A total of 185 ROIs were segmented. Fortyseven parameters were accepted as classifiers with an area under the curve value ranging from 0.586 to 0.718. Support vector machine yielded a sensitivity of 91.3% and a specificity of 85.1%. Random forest classifier yielded a sensitivity of 84.8% and a specificity of 76.7%. Area under curves were 0.921 for support vector machine and 0.892 for random forest classifier.
Radiomics analysis could prove useful for discrimination of reversible and irreversible bone marrow lesions before the irreversible changes occur, which could prevent morbidities of osteonecrosis by guiding the decisionmaking process for management.
与可逆性骨髓病变的自限性不同,不可逆性骨髓病变需要早期手术干预以防止进一步的发病。因此,有必要早期鉴别不可逆性病变。本研究的目的是评估放射组学和机器学习在该主题上的有效性。
扫描一个数据库,查找因骨髓病变鉴别诊断而接受髋关节MRI检查且在首次成像后8周内获得随访图像的患者。显示水肿消退的图像纳入可逆组。其余显示进展为骨坏死特征性体征的纳入不可逆组。对首次MR图像进行放射组学分析,计算一阶和二阶参数。使用这些参数进行支持向量机和随机森林分类器分析。
纳入37例患者(17例骨坏死)。共分割出185个感兴趣区。47个参数被用作分类器,曲线下面积值范围为0.586至0.718。支持向量机的灵敏度为91.3%,特异度为85.1%。随机森林分类器的灵敏度为84.8%,特异度为76.7%。支持向量机的曲线下面积为0.921,随机森林分类器的曲线下面积为0.892。
放射组学分析可能有助于在不可逆变化发生之前鉴别可逆性和不可逆性骨髓病变,这可以通过指导管理决策过程来预防骨坏死的发病。