A dynamic lesion model for differentiation of malignant and benign pathologies

Abstract Malignant lesions have a high tendency to invade their surrounding environment compared to benign ones. This paper proposes a dynamic lesion model and explores the 2nd order derivatives at each image voxel, which reflect the rate of change of image intensity, as a quantitative measure of th...

Full description

Bibliographic Details
Main Authors: Weiguo Cao, Zhengrong Liang, Yongfeng Gao, Marc J. Pomeroy, Fangfang Han, Almas Abbasi, Perry J. Pickhardt
Format: Article
Language:English
Published: Nature Publishing Group 2021-02-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-83095-2
id doaj-6eeeb9f0e11e4bf18f7064c086038263
record_format Article
spelling doaj-6eeeb9f0e11e4bf18f7064c0860382632021-02-14T12:34:48ZengNature Publishing GroupScientific Reports2045-23222021-02-0111111110.1038/s41598-021-83095-2A dynamic lesion model for differentiation of malignant and benign pathologiesWeiguo Cao0Zhengrong Liang1Yongfeng Gao2Marc J. Pomeroy3Fangfang Han4Almas Abbasi5Perry J. Pickhardt6Department of Radiology, State University of New York at Stony BrookDepartment of Radiology, State University of New York at Stony BrookDepartment of Radiology, State University of New York at Stony BrookDepartment of Radiology, State University of New York at Stony BrookSchool of Biomedical Engineering, Southern Medical UniversityDepartment of Radiology, State University of New York at Stony BrookDepartment of Radiology, School of Medicine, University of WisconsinAbstract Malignant lesions have a high tendency to invade their surrounding environment compared to benign ones. This paper proposes a dynamic lesion model and explores the 2nd order derivatives at each image voxel, which reflect the rate of change of image intensity, as a quantitative measure of the tendency. The 2nd order derivatives at each image voxel are usually represented by the Hessian matrix, but it is difficult to quantify a matrix field (or image) through the lesion space as a measure of the tendency. We conjecture that the three eigenvalues contain important information of the Hessian matrix and are chosen as the surrogate representation of the Hessian matrix. By treating the three eigenvalues as a vector, called Hessian vector, which is defined in a local coordinate formed by three orthogonal Hessian eigenvectors and further adapting the gray level occurrence computing method to extract the vector texture descriptors (or measures) from the Hessian vector, a quantitative presentation for the dynamic lesion model is completed. The vector texture descriptors were applied to differentiate malignant from benign lesions from two pathologically proven datasets: colon polyps and lung nodules. The classification results not only outperform four state-of-the-art methods but also three radiologist experts.https://doi.org/10.1038/s41598-021-83095-2
collection DOAJ
language English
format Article
sources DOAJ
author Weiguo Cao
Zhengrong Liang
Yongfeng Gao
Marc J. Pomeroy
Fangfang Han
Almas Abbasi
Perry J. Pickhardt
spellingShingle Weiguo Cao
Zhengrong Liang
Yongfeng Gao
Marc J. Pomeroy
Fangfang Han
Almas Abbasi
Perry J. Pickhardt
A dynamic lesion model for differentiation of malignant and benign pathologies
Scientific Reports
author_facet Weiguo Cao
Zhengrong Liang
Yongfeng Gao
Marc J. Pomeroy
Fangfang Han
Almas Abbasi
Perry J. Pickhardt
author_sort Weiguo Cao
title A dynamic lesion model for differentiation of malignant and benign pathologies
title_short A dynamic lesion model for differentiation of malignant and benign pathologies
title_full A dynamic lesion model for differentiation of malignant and benign pathologies
title_fullStr A dynamic lesion model for differentiation of malignant and benign pathologies
title_full_unstemmed A dynamic lesion model for differentiation of malignant and benign pathologies
title_sort dynamic lesion model for differentiation of malignant and benign pathologies
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-02-01
description Abstract Malignant lesions have a high tendency to invade their surrounding environment compared to benign ones. This paper proposes a dynamic lesion model and explores the 2nd order derivatives at each image voxel, which reflect the rate of change of image intensity, as a quantitative measure of the tendency. The 2nd order derivatives at each image voxel are usually represented by the Hessian matrix, but it is difficult to quantify a matrix field (or image) through the lesion space as a measure of the tendency. We conjecture that the three eigenvalues contain important information of the Hessian matrix and are chosen as the surrogate representation of the Hessian matrix. By treating the three eigenvalues as a vector, called Hessian vector, which is defined in a local coordinate formed by three orthogonal Hessian eigenvectors and further adapting the gray level occurrence computing method to extract the vector texture descriptors (or measures) from the Hessian vector, a quantitative presentation for the dynamic lesion model is completed. The vector texture descriptors were applied to differentiate malignant from benign lesions from two pathologically proven datasets: colon polyps and lung nodules. The classification results not only outperform four state-of-the-art methods but also three radiologist experts.
url https://doi.org/10.1038/s41598-021-83095-2
work_keys_str_mv AT weiguocao adynamiclesionmodelfordifferentiationofmalignantandbenignpathologies
AT zhengrongliang adynamiclesionmodelfordifferentiationofmalignantandbenignpathologies
AT yongfenggao adynamiclesionmodelfordifferentiationofmalignantandbenignpathologies
AT marcjpomeroy adynamiclesionmodelfordifferentiationofmalignantandbenignpathologies
AT fangfanghan adynamiclesionmodelfordifferentiationofmalignantandbenignpathologies
AT almasabbasi adynamiclesionmodelfordifferentiationofmalignantandbenignpathologies
AT perryjpickhardt adynamiclesionmodelfordifferentiationofmalignantandbenignpathologies
AT weiguocao dynamiclesionmodelfordifferentiationofmalignantandbenignpathologies
AT zhengrongliang dynamiclesionmodelfordifferentiationofmalignantandbenignpathologies
AT yongfenggao dynamiclesionmodelfordifferentiationofmalignantandbenignpathologies
AT marcjpomeroy dynamiclesionmodelfordifferentiationofmalignantandbenignpathologies
AT fangfanghan dynamiclesionmodelfordifferentiationofmalignantandbenignpathologies
AT almasabbasi dynamiclesionmodelfordifferentiationofmalignantandbenignpathologies
AT perryjpickhardt dynamiclesionmodelfordifferentiationofmalignantandbenignpathologies
_version_ 1724270293263843328