National Institute of Water and Atmospheric Research, Hamilton, New Zealand.
Centre for Research into Ecological & Environmental Modelling, School of Mathematics and Statistics, University of St Andrews, St Andrews, UK.
Stat Med. 2019 Apr 15;38(8):1421-1441. doi: 10.1002/sim.8046. Epub 2018 Nov 28.
Diagnosis and prognosis of cancer are informed by the architecture inherent in cancer patient tissue sections. This architecture is typically identified by pathologists, yet advances in computational image analysis facilitate quantitative assessment of this structure. In this article, we develop a spatial point process approach to describe patterns in cell distribution within tissue samples taken from colorectal cancer (CRC) patients. In particular, our approach is centered on the Palm intensity function. This leads to taking an approximate-likelihood technique in fitting point processes models. We consider two Neyman-Scott point processes and a void process, fitting these point process models to the CRC patient data. We find that the parameter estimates of these models may be used to quantify the spatial arrangement of cells. Importantly, we observe characteristic differences in the spatial arrangement of cells between patients who died from CRC and those alive at follow up.
癌症的诊断和预后取决于癌症患者组织切片中固有的结构。这种结构通常由病理学家识别,但计算图像分析的进步促进了对这种结构的定量评估。在本文中,我们开发了一种空间点过程方法来描述从结直肠癌 (CRC) 患者组织样本中细胞分布的模式。具体来说,我们的方法集中在 Palm 强度函数上。这导致在拟合点过程模型时采用近似似然技术。我们考虑了两个 Neyman-Scott 点过程和一个空洞过程,并将这些点过程模型拟合到 CRC 患者数据中。我们发现,这些模型的参数估计可用于量化细胞的空间排列。重要的是,我们观察到死于 CRC 的患者和随访中存活的患者之间细胞空间排列的特征差异。