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Brain tumor prediction on MR images with semantic segmentation by using deep learning network and 3D imaging of tumor region

机译:利用肿瘤区深层学习网络和3D成像对语义分割MR图像的脑肿瘤预测

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When it comes to medical image segmentation on brain MR images, using deep learning techniques has a significant impact to predict tumor existence. Manual segmentation of a brain tumor is a time-consuming task and depends on knowledge and experience of physicians. In this paper, we present a semantic segmentation method by utilizing convolutional neural network to automatically segment brain tumor on 3D Brain Tumor Segmentation (BraTS) image data sets that comprise four different imaging modalities (T1, T1C, T2 and Flair). In addition, our study includes 3D imaging of whole brain and comparison between ground truth and predicted labels in 3D. In order to obtain exact tumor region and dimensions such as height, width and depth, this method was successfully applied and images were displayed different planes including sagittal, coronal and axial. Evaluation results of semantic segmentation which was executed by a deep learning network are significantly promising in terms of tumor prediction. Mean prediction ratio was determined as 91.718. Mean IoU (Intersection over Union) and Mean BF score were calculated as 86.946 and 92.938, respectively. Finally, dice scores of the test images were showed significant similarity between ground truth and predicted labels. As a result, both semantic segmentation metrics and 3D imaging can be interpreted as meaningful for diagnosing brain tumor accurately.
机译:当涉及脑MR图像上的医学图像分割时,使用深度学习技术对预测肿瘤的存在具有显着影响。脑肿瘤的手动分割是一种耗时的任务,取决于医生的知识和经验。在本文中,我们通过利用卷积神经网络在3D脑肿瘤分割(BRATS)图像数据集上通过利用卷积神经网络自动分段脑肿瘤(BRATS)图像数据集(T1,T1C,T2和FLAIR)进行语义分割方法。此外,我们的研究包括整个大脑的3D成像,以及地面真理与3D预测标签的比较。为了获得精确的肿瘤区域和尺寸,例如高度,宽度和深度,该方法被成功地应用,并且图像被显示出不同的平面,包括矢状,冠状和轴向。深度学习网络执行的语义分割的评价结果​​在肿瘤预测方面具有显着承诺。平均预测率确定为91.718。平均iou(联盟交叉)和平均bf得分分别计算为86.946和92.938。最后,在地面真理和预测标签之间显示了测试图像的骰子得分。结果,可以将语义分割度量和3D成像解释为准确诊断脑肿瘤的有意义。

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