Volume 38, Issue 8
RESEARCH ARTICLE

Identifying prognostic structural features in tissue sections of colon cancer patients using point pattern analysis

Charlotte M. Jones‐Todd

Corresponding Author

E-mail address: Charlotte.JonesTodd@niwa.co.nz

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

Charlotte M. Jones‐Todd, NIWA, Gate 10 Silverdale Road, Hillcrest, Hamilton, NZ.

Email: Charlotte.JonesTodd@niwa.co.nz

Peter Caie, School of Medicine, University of St Andrews, KY16 9TF, UK.

Email: pdc5@st-andrews.ac.uk

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Peter Caie

E-mail address: pdc5@st-andrews.ac.uk

School of Medicine, University of St Andrews, St Andrews, UK

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Janine B. Illian

Centre for Research into Ecological & Environmental Modelling, School of Mathematics and Statistics, University of St Andrews, St Andrews, UK

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Ben C. Stevenson

Department of Statistics, University of Auckland, New Zealand

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Anne Savage

School of Science, Engineering and Technology, Abertay University, UK

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David J. Harrison

School of Medicine, University of St Andrews, St Andrews, UK

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James L. Bown

School of Arts, Media and Computer Games, Abertay University, UK

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First published: 28 November 2018
Citations: 1
Point pattern analysis of colon cancer tissue sections.
Abbreviations: CRC, colon rectal cancer; NSPP, Neyman‐Scott point process

Abstract

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.

Number of times cited according to CrossRef: 1

  • A generalizable data-driven multicellular model of pancreatic ductal adenocarcinoma, GigaScience, 10.1093/gigascience/giaa075, 9, 7, (2020).

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