Faculty of Computer Science and Engineering, Ghulam Ishaq Khan Institute of Engineering Sciences and Technology, Topi, Pakistan.
National Centre of Artificial Intelligence (NCAI), Saudi Data and Artificial Intelligence Authority (SDAIA), Riyadh, Saudi Arabia.
J Healthc Eng. 2021 Aug 4;2021:4138137. doi: 10.1155/2021/4138137. eCollection 2021.
Multiple sclerosis (MS) is a chronic and autoimmune disease that forms lesions in the central nervous system. Quantitative analysis of these lesions has proved to be very useful in clinical trials for therapies and assessing disease prognosis. However, the efficacy of these quantitative analyses greatly depends on how accurately the MS lesions have been identified and segmented in brain MRI. This is usually carried out by radiologists who label 3D MR images slice by slice using commonly available segmentation tools. However, such manual practices are time consuming and error prone. To circumvent this problem, several automatic segmentation techniques have been investigated in recent years. In this paper, we propose a new framework for automatic brain lesion segmentation that employs a novel convolutional neural network (CNN) architecture. In order to segment lesions of different sizes, we have to pick a specific filter or size 3 × 3 or 5 × 5. Sometimes, it is hard to decide which filter will work better to get the best results. Google Net has solved this problem by introducing an inception module. An inception module uses 3 × 3, 5 × 5, 1 × 1 and max pooling filters in parallel fashion. Results show that incorporating inception modules in a CNN has improved the performance of the network in the segmentation of MS lesions. We compared the results of the proposed CNN architecture for two loss functions: binary cross entropy (BCE) and structural similarity index measure (SSIM) using the publicly available ISBI-2015 challenge dataset. A score of 93.81 which is higher than the human rater with BCE loss function is achieved.
多发性硬化症(MS)是一种慢性自身免疫性疾病,会在中枢神经系统中形成病变。这些病变的定量分析已被证明在治疗和评估疾病预后的临床试验中非常有用。然而,这些定量分析的效果在很大程度上取决于脑 MRI 中 MS 病变的识别和分割的准确性。这通常由放射科医生完成,他们使用常用的分割工具对 3D MR 图像进行逐片标记。然而,这种手动操作既耗时又容易出错。为了解决这个问题,近年来已经研究了几种自动分割技术。在本文中,我们提出了一种新的自动脑病变分割框架,该框架采用了新颖的卷积神经网络(CNN)架构。为了分割不同大小的病变,我们必须选择特定的滤波器或 3x3 或 5x5 的大小。有时,很难确定哪个滤波器将更有效地获得最佳结果。Google Net 通过引入 inception 模块解决了这个问题。inception 模块以并行方式使用 3x3、5x5、1x1 和最大池化滤波器。结果表明,在 CNN 中引入 inception 模块可以提高网络在 MS 病变分割中的性能。我们比较了两种损失函数(二值交叉熵(BCE)和结构相似性指数度量(SSIM))下所提出的 CNN 架构的结果,使用了公开的 ISBI-2015 挑战赛数据集。使用 BCE 损失函数获得了 93.81 的分数,高于人类评分者。