Department of Mathematics, EEBE, Technical University of Catalonia, Street Eduard Maristany 6-12, 08019, Barcelona, Spain.
Biomedical Diagnostic Center in the Hospital Clinic, Villarroel 170, 08036, Barcelona, Spain.
Med Biol Eng Comput. 2019 Jun;57(6):1265-1283. doi: 10.1007/s11517-019-01954-7. Epub 2019 Feb 7.
Current computerized image systems are able to recognize normal blood cells in peripheral blood, but fail with abnormal cells like the classes of lymphocytes associated to lymphomas. The main challenge lies in the subtle differences in morphologic characteristics among these classes, which requires a refined segmentation. A new efficient segmentation framework has been developed, which uses the image color information through fuzzy clustering of different color components and the application of the watershed transformation with markers. The final result is the separation of three regions of interest: nucleus, entire cell, and peripheral zone around the cell. Segmentation of this zone is crucial to extract a new feature to identify cells with hair-like projections. The segmentation is validated, using a database of 4758 cell images with normal, reactive lymphocytes and five types of malignant lymphoid cells from blood smears of 105 patients, in two ways: (1) the efficiency in the accurate separation of the regions of interest, which is 92.24%, and (2) the accuracy of a classification system implemented over the segmented cells, which is 91.54%. In conclusion, the proposed segmentation framework is suitable to distinguish among abnormal blood cells with subtile color and spatial similarities. Graphical Abstract The segmentation framework uses the image color information through fuzzy clustering of different color components and the application of the watershed transformation with markers (Top). The final result is the separation of three regions of interest: nucleus, entire cell, and peripheral zone around the cell. The procedure is also validated by the implementation of a system to automatically classify different types of abnormal blood cells (Bottom).
当前的计算机化图像系统能够识别外周血中的正常血细胞,但对于与淋巴瘤相关的淋巴细胞等异常细胞却无能为力。主要的挑战在于这些细胞类型之间形态特征的细微差异,这需要进行精细的分割。我们开发了一种新的高效分割框架,该框架通过对不同颜色分量进行模糊聚类以及应用带标记的分水岭变换来利用图像的颜色信息。最终的结果是将三个感兴趣区域分离出来:细胞核、整个细胞和细胞周围的外周区。分割这个区域对于提取识别具有毛发状突起的细胞的新特征至关重要。我们使用来自 105 名患者血涂片的 4758 个正常、反应性淋巴细胞和五种恶性淋巴样细胞的数据库,通过两种方式验证了分割的准确性:(1)准确分离感兴趣区域的效率为 92.24%,(2)在分割后的细胞上实现的分类系统的准确性为 91.54%。总之,所提出的分割框架适用于区分具有细微颜色和空间相似性的异常血细胞。