应用心房卷积神经网络进行T2W-MRI前列腺分区分割

Zia Khan, N. Yahya, K. Alsaih, F. Mériaudeau
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引用次数: 7

摘要

随着人口老龄化的加剧,前列腺癌病例的数量正在稳步上升。据报道,1期前列腺癌患者的5年相对生存率几乎为99%,因此,早期发现将显著改善治疗计划,提高生存率。磁共振成像(MRI)技术是诊断前列腺癌的常用成像方式。MRI提供了良好的软组织可视化,可以更好地发现前列腺癌的病变和分期。前列腺全腺分割的主要挑战是中央腺(CG)和外周腺(PZ)的边界模糊,导致了前列腺全腺的鉴别诊断。因为这两个地区的癌症发生和特征有很大的不同。为了增强前列腺的诊断能力,我们采用DeeplabV3+语义分割方法对前列腺进行区域分割。DeepLabV3+通过多次不同速率的平行心房卷积,在前列腺MRI分割上取得了显著的效果。在包含40例患者的NCI-ISBI 1.5T和3T MRI数据集上对基于cnn的语义分割方法进行了训练和测试。将基于Dice相似系数(DSC)的deep - plabb语义分割的性能评价与另外两种基于cnn的语义分割技术FCN和PSNet进行了比较。结果表明,DeepLabV3+的前列腺分割效果优于FCN和PSNet, PZ区的平均DSC为70.3%,CG区的平均DSC为88%。这表明,在产生更好的前列腺分割结果方面,心房卷积层的贡献很大。
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Zonal Segmentation of Prostate T2W-MRI using Atrous Convolutional Neural Network
The number of prostate cancer cases is steadily increasing especially with rising number of ageing population. It is reported that 5-year relative survival rate for man with stage 1 prostate cancer is almost 99% hence, early detection will significantly improve treatment planning and increase survival rate. Magnetic resonance imaging (MRI) technique is a common imaging modality for diagnosis of prostate cancer. MRI provide good visualization of soft tissue and enable better lesion detection and staging of prostate cancer. The main challenge of prostate whole gland segmentation is due to blurry boundary of central gland (CG) and peripheral zone (PZ) which lead to differential diagnosis. Since there is substantial difference in occurance and characteristic of cancer in both zones. So to enhance the diagnosis of prostate gland, we implemented DeeplabV3+ semantic segmentation approach to segment the prostate into zones. DeepLabV3+ achieved significant results in segmentation of prostate MRI by applying several parallel atrous convolution with different rates. The CNN-based semantic segmentation approach is trained and tested on NCI-ISBI 1.5T and 3T MRI dataset consist of 40 patients. Performance evaluation based on Dice similarity coefficient (DSC) of the Deeplab-based segmentation is compared with two other CNN-based semantic segmentation techniques: FCN and PSNet. Results shows that prostate segmentation using DeepLabV3+ can perform better than FCN and PSNet with average DSC of 70.3% in PZ and 88% in CG zone. This indicates the significant contribution made by the atrous convolution layer, in producing better prostate segmentation result.
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