Lung Cancer Pathological Image Analysis Using a Hidden Potts Model

Nowadays, many biological data are acquired via images. In this article, we study the pathological images scanned from 205 patients with lung cancer with the goal to find out the relationship between the survival time and the spatial distribution of different types of cells, including lymphocyte, st...

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Main Authors: Qianyun Li, Faliu Yi, Tao Wang, Guanghua Xiao, Faming Liang
Format: Article
Language:English
Published: SAGE Publishing 2017-06-01
Series:Cancer Informatics
Online Access:https://doi.org/10.1177/1176935117711910
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spelling doaj-a16a8c0c6ea342bca2a97dd9d8c0ec722020-11-25T03:39:28ZengSAGE PublishingCancer Informatics1176-93512017-06-011610.1177/1176935117711910Lung Cancer Pathological Image Analysis Using a Hidden Potts ModelQianyun Li0Faliu Yi1Tao Wang2Guanghua Xiao3Faming Liang4Department of Biostatistics, University of Florida, Gainesville, FL, USAImage Analysis, UT Southwestern Medical Center, Dallas, TX, USADepartment of Clinical Sciences, UT Southwestern Medical Center, Dallas, TX, USADepartment of Clinical Sciences, UT Southwestern Medical Center, Dallas, TX, USADepartment of Biostatistics, University of Florida, Gainesville, FL, USANowadays, many biological data are acquired via images. In this article, we study the pathological images scanned from 205 patients with lung cancer with the goal to find out the relationship between the survival time and the spatial distribution of different types of cells, including lymphocyte, stroma, and tumor cells. Toward this goal, we model the spatial distribution of different types of cells using a modified Potts model for which the parameters represent interactions between different types of cells and estimate the parameters of the Potts model using the double Metropolis-Hastings algorithm. The double Metropolis-Hastings algorithm allows us to simulate samples approximately from a distribution with an intractable normalizing constant. Our numerical results indicate that the spatial interaction between the lymphocyte and tumor cells is significantly associated with the patient’s survival time, and it can be used together with the cell count information to predict the survival of the patients.https://doi.org/10.1177/1176935117711910
collection DOAJ
language English
format Article
sources DOAJ
author Qianyun Li
Faliu Yi
Tao Wang
Guanghua Xiao
Faming Liang
spellingShingle Qianyun Li
Faliu Yi
Tao Wang
Guanghua Xiao
Faming Liang
Lung Cancer Pathological Image Analysis Using a Hidden Potts Model
Cancer Informatics
author_facet Qianyun Li
Faliu Yi
Tao Wang
Guanghua Xiao
Faming Liang
author_sort Qianyun Li
title Lung Cancer Pathological Image Analysis Using a Hidden Potts Model
title_short Lung Cancer Pathological Image Analysis Using a Hidden Potts Model
title_full Lung Cancer Pathological Image Analysis Using a Hidden Potts Model
title_fullStr Lung Cancer Pathological Image Analysis Using a Hidden Potts Model
title_full_unstemmed Lung Cancer Pathological Image Analysis Using a Hidden Potts Model
title_sort lung cancer pathological image analysis using a hidden potts model
publisher SAGE Publishing
series Cancer Informatics
issn 1176-9351
publishDate 2017-06-01
description Nowadays, many biological data are acquired via images. In this article, we study the pathological images scanned from 205 patients with lung cancer with the goal to find out the relationship between the survival time and the spatial distribution of different types of cells, including lymphocyte, stroma, and tumor cells. Toward this goal, we model the spatial distribution of different types of cells using a modified Potts model for which the parameters represent interactions between different types of cells and estimate the parameters of the Potts model using the double Metropolis-Hastings algorithm. The double Metropolis-Hastings algorithm allows us to simulate samples approximately from a distribution with an intractable normalizing constant. Our numerical results indicate that the spatial interaction between the lymphocyte and tumor cells is significantly associated with the patient’s survival time, and it can be used together with the cell count information to predict the survival of the patients.
url https://doi.org/10.1177/1176935117711910
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AT taowang lungcancerpathologicalimageanalysisusingahiddenpottsmodel
AT guanghuaxiao lungcancerpathologicalimageanalysisusingahiddenpottsmodel
AT famingliang lungcancerpathologicalimageanalysisusingahiddenpottsmodel
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