基于影像组学的人工智能结合体积测量法对神经退行性疾病的鉴别诊断
Radiomics-Based Artificial Intelligence Differentiation of Neurodegenerative Diseases with Reference to the Volumetry.
作者信息
Cheung Eva Y W, Chau Anson C M, Tang Fuk Hay
机构信息
School of Medical Health and Sciences, Tung Wah College, 19/F, 31 Wylie Road, Ho Man Tin, Hong Kong, China.
Medical Radiation Science, Allied Health and Human Performance Unit, University of South Australia, City East Campus, Bonython Jubilee Building, 1-26, Adelaide, SA 5001, Australia.
出版信息
Life (Basel). 2022 Mar 31;12(4):514. doi: 10.3390/life12040514.
UNLABELLED
This study aimed to build automated detection models-one by brain regional volume (V-model), and the other by radiomics features of the whole brain (R-model)-to differentiate mild cognitive impairment (MCI) from cognitive normal (CN), and Alzheimer's Disease (AD) from mild cognitive impairment (MCI). The objectives are to compare the models and identify whether radiomics or volumetry can provide a better prediction for differentiating different types of dementia.
METHOD
582 MRI T1-weighted images were retrieved from the Alzheimer's Disease Neuroimaging Initiative (ADNI) database, which is a multicenter operating open source database for AD. In total, 97 images of AD, 293 images of MCI patient and 192 images of cognitive normal were divided into a training, a validation and a test group at a ratio of 70:15:15. For each T1-weighted image, volumetric segmentation was performed with the image analysis software FreeSurfer, and radiomics features were retrieved by imaging research software 3D slicers. Brain regional volume and radiomics features were used to build the V-model and R-model, respectively, using the random forest algorithm by R. The receiver operating characteristics (ROC) curve of both models were used to evaluate their diagnostic accuracy and reliability to differentiate AD, MCI and CN.
RESULTS
To differentiate MCI and CN, both V-model and R-model achieved excellent performance, with an AUC of 0.9992 ± 0.0022 and 0.9850 ± 0.0032, respectively. No significant difference was found between the two AUCs, indicating both models attained similar good performance. In MCI and AD differentiation, the V-model and R-model yielded AUC of 0.9986 ± 0.0013 and 0.9714 ± 0.0175, respectively. The best performance was to differentiate AD from CN, where the V-model and R-model yielded AUC of 0.9994 ± 0.0019 and 0.9830 ± 0.009, respectively. The results suggested that both volumetry and radiomics approaches could be used in differentiating AD, MCI and CN, based on T1 weighted MR images using random forest algorithm successfully.
CONCLUSION
This study showed that the radiomics features from T1-weighted MR images achieved excellence performance in differentiating AD, MCI and CN. Compared to the volumetry method, the accuracy, sensitivity and specificity are slightly lower in using radiomics, but still attained very good and reliable classification of the three stages of neurodegenerations. In view of the convenience and operator independence in feature extraction, radiomics can be a quantitative biomarker to differentiate the disease groups.
未标注
本研究旨在构建自动化检测模型——一个基于脑区体积(V模型),另一个基于全脑的放射组学特征(R模型),以区分轻度认知障碍(MCI)和认知正常(CN),以及阿尔茨海默病(AD)和轻度认知障碍(MCI)。目的是比较这些模型,并确定放射组学或体积测量法能否为区分不同类型的痴呆提供更好的预测。
方法
从阿尔茨海默病神经影像倡议(ADNI)数据库中检索了582张MRI T1加权图像,该数据库是一个用于AD的多中心运营的开源数据库。总共将97张AD图像、293张MCI患者图像和192张认知正常图像按70:15:15的比例分为训练组、验证组和测试组。对于每张T1加权图像,使用图像分析软件FreeSurfer进行体积分割,并通过影像研究软件3D Slicer获取放射组学特征。分别使用R语言的随机森林算法,利用脑区体积和放射组学特征构建V模型和R模型。使用两个模型的受试者操作特征(ROC)曲线来评估它们区分AD、MCI和CN的诊断准确性和可靠性。
结果
为区分MCI和CN,V模型和R模型均表现出色,AUC分别为0.9992±0.0022和0.9850±0.0032。两个AUC之间未发现显著差异,表明两个模型都取得了相似的良好性能。在区分MCI和AD时,V模型和R模型的AUC分别为0.9986±0.0013和0.9714±0.0175。最佳性能是区分AD和CN,此时V模型和R模型的AUC分别为0.9994±0.0019和0.9830±0.009。结果表明,基于T1加权MR图像并成功使用随机森林算法,体积测量法和放射组学方法均可用于区分AD、MCI和CN。
结论
本研究表明,T1加权MR图像的放射组学特征在区分AD、MCI和CN方面表现出色。与体积测量法相比,使用放射组学时的准确性、敏感性和特异性略低,但仍对神经退行性变的三个阶段实现了非常好且可靠的分类。鉴于特征提取的便利性和操作者独立性,放射组学可作为区分疾病组的定量生物标志物。