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Tumor type detection in brain MR images of the deep model developed using hypercolumn technique, attention modules, and residual blocks
Medical & Biological Engineering & Computing ( IF 3.2 ) Pub Date : 2020-11-21 , DOI: 10.1007/s11517-020-02290-x
Mesut Toğaçar 1 , Burhan Ergen 1 , Zafer Cömert 2
Affiliation  

Brain cancer is a disease caused by the growth of abnormal aggressive cells in the brain outside of normal cells. Symptoms and diagnosis of brain cancer cases are producing more accurate results day by day in parallel with the development of technological opportunities. In this study, a deep learning model called BrainMRNet which is developed for mass detection in open-source brain magnetic resonance images was used. The BrainMRNet model includes three processing steps: attention modules, the hypercolumn technique, and residual blocks. To demonstrate the accuracy of the proposed model, three types of tumor data leading to brain cancer were examined in this study: glioma, meningioma, and pituitary. In addition, a segmentation method was proposed, which additionally determines in which lobe area of the brain the two classes of tumors that cause brain cancer are more concentrated. The classification accuracy rates were performed in the study; it was 98.18% in glioma tumor, 96.73% in meningioma tumor, and 98.18% in pituitary tumor. At the end of the experiment, using the subset of glioma and meningioma tumor images, it was determined which at brain lobe the tumor region was seen, and 100% success was achieved in the analysis of this determination. In this study, a hybrid deep learning model is presented to determine the detection of the brain tumor. In addition, open-source software was proposed, which statistically found in which lobe region of the human brain the brain tumor occurred. The methods applied and tested in the experiments have shown promising results with a high level of accuracy, precision, and specificity. These results demonstrate the availability of the proposed approach in clinical settings to support the medical decision regarding brain tumor detection.



中文翻译:

使用超列技术、注意力模块和残差块开发的深度模型的脑 MR 图像中的肿瘤类型检测

脑癌是由正常细胞外的大脑中异常侵袭性细胞生长引起的疾病。随着技术机会的发展,脑癌病例的症状和诊断每天都在产生更准确的结果。在这项研究中,使用了一种名为 BrainMRNet 的深度学习模型,该模型是为开源大脑磁共振图像中的质量检测而开发的。BrainMRNet 模型包括三个处理步骤:注意力模块、超列技术和残差块。为了证明所提出模型的准确性,本研究检查了导致脑癌的三种类型的肿瘤数据:神经胶质瘤、脑膜瘤和垂体。此外,还提出了一种分割方法,这也决定了导致脑癌的两类肿瘤更集中在大脑的哪个叶区域。研究中进行了分类准确率;胶质瘤98.18%,脑膜瘤96.73%,垂体瘤98.18%。在实验结束时,使用神经胶质瘤和脑膜瘤肿瘤图像的子集,确定在脑叶看到肿瘤区域,并且在该确定的分析中实现了100%的成功。在这项研究中,提出了一种混合深度学习模型来确定脑肿瘤的检测。此外,还提出了开源软件,该软件可以统计发现脑肿瘤发生在人脑的哪个叶区域。在实验中应用和测试的方法显示出具有高准确度、精确度和特异性的有希望的结果。这些结果证明了所提出的方法在临床环境中的可用性,以支持有关脑肿瘤检测的医疗决策。

更新日期:2020-11-22
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