脑幕上肿瘤MR图像分割分类的深度多任务学习结构

Shirin Kordnoori , Maliheh Sabeti , Mohammad Hossein Shakoor , Ehsan Moradi
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引用次数: 0

摘要

在mri图像中识别脑肿瘤边界并确定其可能的病理是术前分析这一严重疾病的重要步骤。由于脑肿瘤在形状、边界不规则性、一致性等特征上存在巨大差异,且观察者之间存在差异,因此在神经外科实践中,人工对脑肿瘤进行分割和分类是一个很大的挑战。为了解决这一问题,近年来已经提出了一些脑肿瘤的自动分割或分类方法,但目前还没有提出一种基于智能的MR图像中肿瘤类型和肿瘤边界的同时识别方法。在这里,我们计划了一个独特的自动模型,包括一个用于特征表示的通用编码器,一个用于分割的解码器和一个用于脑MR图像中三种常见原发性脑肿瘤(脑膜瘤,胶质瘤和垂体腺瘤)分类的多层感知器。在一个脑肿瘤图像数据集上测试了该模型,并在多任务和单任务学习模型下对输出结果进行了评估。多任务学习模型在脑肿瘤的同时分类和分割方面取得了显著的进步,每个任务的准确率有望达到97%。因此,该模型可作为临床常见原发性脑肿瘤早期诊断的初级筛查工具,成功率高。
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Deep multi-task learning structure for segmentation and classification of supratentorial brain tumors in MR images

Identification of brain tumors border and determination of their possible pathology in MR images is an important step in pre-operation analyzing of this serious medical condition. Manual segmentation and classification of brain tumors could be challenge full in neurosurgical practice because of vast differences between brain tumors characteristic such as shape, border irregularity, consistency and etc. as well as interobserver variations. To solve this problem, some automatic methods have been proposed for brain tumors segmentation or classification during recent years, but an intelligence-based method for simultaneous identification of tumor type and tumor border in MR images has not proposed till now. Here, we have planned a unique automatic model includes a common encoder for feature representation, one decoder for segmentation and a multi-layer perceptron for classification of three common primary brain tumors (meningiomas, gliomas and pituitary adenomas) in brain MR images. The proposed model was examined on a brain tumor images dataset and the output were evaluated in both multi-task and single-task learning model. The multi-task learning model gains significant improvement in simultaneous classification and segmentation of brain tumors with promising accuracy of 97% for each task. So, this model could serve as a primary screening tool for early diagnosis of common primary brain tumors in general practice with a high success rate.

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0.00%
发文量
236
审稿时长
15 weeks
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