Faculty of Biomedical Engineering, Technical University Eindhoven, Eindhoven, the Netherlands; Computational Pathology Group, Radboud Institute for Health Sciences, Radboud University Medical Center, Nijmegen, the Netherlands.
Computational Pathology Group, Radboud Institute for Health Sciences, Radboud University Medical Center, Nijmegen, the Netherlands; Department of Pathology, Radboud University Medical Center, Nijmegen, the Netherlands.
Pathology. 2022 Apr;54(3):318-327. doi: 10.1016/j.pathol.2021.07.011. Epub 2021 Nov 10.
Cellularity estimation forms an important aspect of the visual examination of bone marrow biopsies. In clinical practice, cellularity is estimated by eye under a microscope, which is rapid, but subjective and subject to inter- and intraobserver variability. In addition, there is little consensus in the literature on the normal variation of cellularity with age. Digital image analysis may be used for more objective quantification of cellularity. As such, we developed a deep neural network for the segmentation of six major cell and tissue types in digitized bone marrow trephine biopsies. Using this segmentation, we calculated the overall bone marrow cellularity in a series of biopsies from 130 patients across a wide age range. Using intraclass correlation coefficients (ICC), we measured the agreement between the quantification by the neural network and visual estimation by two pathologists and compared it to baseline human performance. We also examined the age-related changes of cellularity and cell lineages in bone marrow and compared our results to those found in the literature. The network was capable of accurate segmentation (average accuracy and dice score of 0.95 and 0.76, respectively). There was good neural network-pathologist agreement on cellularity measurements (ICC=0.78, 95% CI 0.58-0.85). We found a statistically significant downward trend for cellularity, myelopoiesis and megakaryocytes with age in our cohort. The mean cellularity began at approximately 50% in the third decade of life and then decreased ±2% per decade to 40% in the seventh and eighth decade, but the normal range was very wide (30-70%).
细胞计数是骨髓活检视觉检查的一个重要方面。在临床实践中,细胞计数是通过显微镜肉眼估计的,这种方法快速,但主观且存在观察者内和观察者间的变异性。此外,文献中关于细胞计数随年龄的正常变化几乎没有共识。数字图像分析可用于更客观地量化细胞计数。因此,我们开发了一种用于分割数字化骨髓活检中六种主要细胞和组织类型的深度神经网络。使用这种分割,我们计算了来自 130 名患者的一系列活检中的总体骨髓细胞计数,这些患者的年龄范围很广。使用组内相关系数 (ICC),我们测量了神经网络定量和两位病理学家的视觉估计之间的一致性,并将其与基线人类表现进行了比较。我们还研究了骨髓细胞计数和细胞谱系随年龄的变化,并将我们的结果与文献中的结果进行了比较。该网络能够进行准确的分割(平均准确性和骰子评分分别为 0.95 和 0.76)。神经网络和病理学家在细胞计数测量方面具有良好的一致性(ICC=0.78,95%CI 0.58-0.85)。我们在队列中发现细胞计数、髓系细胞生成和巨核细胞随年龄呈统计学显著下降趋势。在第三十年代,平均细胞计数约为 50%,然后每十年下降±2%,到第七和第八十年代降至 40%,但正常范围非常宽(30-70%)。