Külsgaard Hernán C, Orlando José I, Bendersky Mariana, Princich Juan P, Manzanera Luis S R, Vargas Alberto, Kochen Silvia, Larrabide Ignacio
Pladema Institute - UNICEN/CONICET, Tandil, Buenos Aires, Argentina.
Pladema Institute - UNICEN/CONICET, Tandil, Buenos Aires, Argentina.
J Neurol Sci. 2021 Jan 15;420:117220. doi: 10.1016/j.jns.2020.117220. Epub 2020 Nov 6.
Single subject VBM (SS-VBM), has been used as an alternative tool to standard VBM for single case studies. However, it has the disadvantage of producing an excessively large number of false positive detections. In this study we propose a machine learning technique widely used for automated data classification, namely Support Vector Machine (SVM), to refine the findings produced by SS-VBM. A controlled set of experiments was conducted to evaluate the proposed approach using three-dimensional T1 MRI scans from control subjects collected from the publicly available IXI dataset. The scans were artificially atrophied at different locations and with different sizes to mimic the behavior of neurological disorders. Results empirically demonstrated that the proposed method is able to significantly reduce the amount of false positive clusters (p < 0.05), with no statistical differences in the true positive findings (p > 0.05). This evidence was observed to be consistent for different atrophied areas and sizes of atrophies. This approach could be potentially be applied to alleviate the intensive manual analysis that radiologists and clinicians have to perform to filter out miss-detections of SS-VBM, increasing its usability for image reading.
单受试者体素形态学测量(SS-VBM)已被用作单病例研究中标准体素形态学测量的替代工具。然而,它存在产生大量假阳性检测结果的缺点。在本研究中,我们提出一种广泛用于自动数据分类的机器学习技术,即支持向量机(SVM),以优化SS-VBM产生的结果。我们进行了一组对照实验,使用从公开可用的IXI数据集中收集的对照受试者的三维T1 MRI扫描来评估所提出的方法。扫描在不同位置和不同大小上进行人工萎缩,以模拟神经疾病的表现。结果通过实验证明,所提出的方法能够显著减少假阳性簇的数量(p<0.05),而真阳性结果无统计学差异(p>0.05)。对于不同的萎缩区域和萎缩大小,均观察到这一证据是一致的。这种方法有可能用于减轻放射科医生和临床医生为滤除SS-VBM的漏检而必须进行的密集手动分析,提高其在图像读取方面的可用性。