Institute of Computer and Communication Engineering, National Cheng Kung University, Tainan City 701, Taiwan.
Division of Hematology and Oncology, Department of Internal Medicine, E-Da Hospital, Kaohsiung 824, Taiwan.
Sensors (Basel). 2022 Mar 31;22(7):2679. doi: 10.3390/s22072679.
In clinical practice, the Ishak Score system would be adopted to perform the evaluation of the grading and staging of hepatitis according to whether portal areas have fibrous expansion, bridging with other portal areas, or bridging with central veins. Based on these staging criteria, it is necessary to identify portal areas and central veins when performing the Ishak Score staging. The bile ducts have variant types and are very difficult to be detected under a single magnification, hence pathologists must observe bile ducts at different magnifications to obtain sufficient information. This pathologic examinations in routine clinical practice, however, would result in the labor intensive and expensive examination process. Therefore, the automatic quantitative analysis for pathologic examinations has had an increased demand and attracted significant attention recently. A multi-scale inputs of attention convolutional network is proposed in this study to simulate pathologists' examination procedure for observing bile ducts under different magnifications in liver biopsy. The proposed multi-scale attention network integrates cell-level information and adjacent structural feature information for bile duct segmentation. In addition, the attention mechanism of proposed model enables the network to focus the segmentation task on the input of high magnification, reducing the influence from low magnification input, but still helps to provide wider field of surrounding information. In comparison with existing models, including FCN, U-Net, SegNet, DeepLabv3 and DeepLabv3-plus, the experimental results demonstrated that the proposed model improved the segmentation performance on Masson bile duct segmentation task with 72.5% IOU and 84.1% F1-score.
在临床实践中,采用 Ishak 评分系统根据门脉区是否有纤维扩张、与其他门脉区桥接或与中央静脉桥接来评估肝炎的分级和分期。根据这些分期标准,在进行 Ishak 评分分期时,有必要识别门脉区和中央静脉。胆管有不同的类型,在单一放大倍数下很难检测到,因此病理学家必须在不同的放大倍数下观察胆管以获得足够的信息。然而,在常规临床实践中的这种病理检查会导致劳动强度大且检查过程昂贵。因此,自动定量分析病理检查最近的需求增加,并引起了广泛关注。本研究提出了一种多尺度输入的注意卷积网络,以模拟病理学家在肝活检中观察不同放大倍数下胆管的检查过程。所提出的多尺度注意网络集成了细胞级信息和胆管相邻结构特征信息,用于胆管分割。此外,所提出模型的注意力机制使网络能够将分割任务集中在高放大倍数的输入上,减少低放大倍数输入的影响,但仍有助于提供更广泛的周围信息。与包括 FCN、U-Net、SegNet、DeepLabv3 和 DeepLabv3-plus 在内的现有模型相比,实验结果表明,所提出的模型在 Masson 胆管分割任务上提高了分割性能,IOU 达到 72.5%,F1 得分达到 84.1%。