Koga Ryoichi, Koide Shingo, Tanaka Hiromu, Taguchi Kei, Kugler Mauricio, Yokota Tatsuya, Ohshima Koichi, Miyoshi Hiroaki, Nagaishi Miharu, Hashimoto Noriaki, Takeuchi Ichiro, Hontani Hidekata
Dapartment of Computer Science, Gokiso-cho, Showa-ku, Nagoya-shi, Aichi 466-8555, Japan.
Department of Pathology, 67 Asahi-cho, Kurume-shi, Fukuoka 830-0011, Japan.
Micron. 2024 Sep;184:103663. doi: 10.1016/j.micron.2024.103663. Epub 2024 May 30.
We propose a criterion for grading follicular lymphoma that is consistent with the intuitive evaluation, which is conducted by experienced pathologists. A criterion for grading follicular lymphoma is defined by the World Health Organization (WHO) based on the number of centroblasts and centrocytes within the field of view. However, the WHO criterion is not often used in clinical practice because it is impractical for pathologists to visually identify the cell type of each cell and count the number of centroblasts and centrocytes. Hence, based on the widespread use of digital pathology, we make it practical to identify and count the cell type by using image processing and then construct a criterion for grading based on the number of cells. Here, the problem is that labeling the cell type is not easy even for experienced pathologists. To alleviate this problem, we build a new dataset for cell type classification, which contains the pathologists' confusion records during labeling, and we construct the cell type classifier using complementary-label learning from this dataset. Then we propose a criterion based on the composition ratio of cell types that is consistent with the pathologists' grading. Our experiments demonstrate that the classifier can accurately identify cell types and the proposed criterion is more consistent with the pathologists' grading than the current WHO criterion.
我们提出了一种与经验丰富的病理学家进行的直观评估相一致的滤泡性淋巴瘤分级标准。世界卫生组织(WHO)根据视野内中心母细胞和中心细胞的数量定义了滤泡性淋巴瘤的分级标准。然而,WHO标准在临床实践中并不常用,因为病理学家要直观地识别每个细胞的细胞类型并计算中心母细胞和中心细胞的数量是不切实际的。因此,基于数字病理学的广泛应用,我们通过图像处理来识别和计数细胞类型变得切实可行,然后基于细胞数量构建分级标准。在此,问题在于即使对于经验丰富的病理学家来说,标记细胞类型也并非易事。为缓解这一问题,我们构建了一个用于细胞类型分类的新数据集,其中包含病理学家在标记过程中的混淆记录,并使用来自该数据集的互补标签学习构建细胞类型分类器。然后我们提出了一种基于细胞类型组成比例的标准,该标准与病理学家的分级相一致。我们的实验表明,该分类器能够准确识别细胞类型,并且所提出的标准比当前的WHO标准更符合病理学家的分级。