Department of Radiology, Johns Hopkins University School of Medicine, Baltimore, MD, USA.
Department of Radiology, Kyoto University School of Medicine, Kyoto, Japan.
J Healthc Eng. 2019 Jan 29;2019:9507193. doi: 10.1155/2019/9507193. eCollection 2019.
For patients with cognitive disorders and dementia, accurate prognosis of cognitive worsening is critical to their ability to prepare for the future, in collaboration with health-care providers. Despite multiple efforts to apply computational brain magnetic resonance image (MRI) analysis in predicting cognitive worsening, with several successes, brain MRI is not routinely quantified in clinical settings to guide prognosis and clinical decision-making. To encourage the clinical use of a cutting-edge image segmentation method, we developed a prediction model as part of an established web-based cloud platform, MRICloud. The model was built in a from Alzheimer's Disease Neuroimaging Initiative (ADNI) where baseline MRI scans were combined with clinical data over time. Each MRI was parcellated into 265 anatomical units based on the MRICloud fully automated image segmentation function, to measure the volume of each parcel. The Mini Mental State Examination (MMSE) was used as a measure of cognitive function. The normalized volume of 265 parcels, combined with baseline MMSE score, age, and sex were input variables for a Least Absolute Shrinkage and Selection Operator (LASSO) regression analysis, with MMSE change in the subsequent two years as the target for prediction. A leave-one-out analysis performed on the training dataset estimated a correlation coefficient of 0.64 between true and predicted MMSE change. A receiver operating characteristic (ROC) analysis estimated a sensitivity of 0.88 and a specificity of 0.76 in predicting substantial cognitive worsening after two years, defined as MMSE decline of ≥4 points. This MRICloud prediction model was then applied to a of clinically acquired MRIs from the Johns Hopkins Memory and Alzheimer's Treatment Center (MATC), a clinical care setting. In the latter setting, the model had both sensitivity and specificity of 1.0 in predicting substantial cognitive worsening. While the MRICloud prediction model demonstrated promise as a platform on which computational MRI findings can easily be extended to clinical use, further study with a larger number of patients is needed for validation.
对于认知障碍和痴呆症患者,准确预测认知恶化对于他们与医疗保健提供者合作规划未来的能力至关重要。尽管已经做出了多种努力来应用计算脑磁共振成像 (MRI) 分析来预测认知恶化,但取得了一些成功,但是脑 MRI 并未在临床环境中常规量化以指导预后和临床决策。为了鼓励临床使用先进的图像分割方法,我们开发了一个预测模型,作为一个成熟的基于网络的云平台 MRICloud 的一部分。该模型是在阿尔茨海默病神经影像学倡议 (ADNI) 中建立的,其中将基线 MRI 扫描与随时间推移的临床数据相结合。每个 MRI 都基于 MRICloud 全自动图像分割功能被分割成 265 个解剖单元,以测量每个包裹的体积。简易精神状态检查 (MMSE) 用于衡量认知功能。265 个包裹的归一化体积,加上基线 MMSE 评分、年龄和性别,作为最小绝对收缩和选择算子 (LASSO) 回归分析的输入变量,以随后两年的 MMSE 变化为预测目标。在训练数据集上进行的留一法分析估计真实和预测 MMSE 变化之间的相关系数为 0.64。受试者工作特征 (ROC) 分析估计在两年后预测大量认知恶化的敏感性为 0.88,特异性为 0.76,定义为 MMSE 下降≥4 分。然后将该 MRICloud 预测模型应用于约翰霍普金斯记忆和阿尔茨海默病治疗中心 (MATC) 的临床获得的 MRI 。在后一种情况下,该模型在预测大量认知恶化方面具有 1.0 的敏感性和特异性。虽然 MRICloud 预测模型作为一个平台具有前景,可以轻松地将计算 MRI 结果扩展到临床应用,但需要更多患者的进一步研究来验证。