Cargando…

Dynamic NIR Fluorescence Imaging and Machine Learning Framework for Stratifying High vs. Low Notch-Dll4 Expressing Host Microenvironment in Triple-Negative Breast Cancer

SIMPLE SUMMARY: Breast cancer is a disease that is affected by both the tumor cells and the host environment. It is well known that the tumor blood vessels are aberrant in structure and function due to rapid angiogenesis, and this aberrant vasculature plays a major role in drug delivery and therapy...

Descripción completa

Detalles Bibliográficos
Autores principales: Shafiee, Shayan, Jagtap, Jaidip, Zayats, Mykhaylo, Epperlein, Jonathan, Banerjee, Anjishnu, Geurts, Aron, Flister, Michael, Zhuk, Sergiy, Joshi, Amit
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10000786/
https://www.ncbi.nlm.nih.gov/pubmed/36900252
http://dx.doi.org/10.3390/cancers15051460
_version_ 1784903967115837440
author Shafiee, Shayan
Jagtap, Jaidip
Zayats, Mykhaylo
Epperlein, Jonathan
Banerjee, Anjishnu
Geurts, Aron
Flister, Michael
Zhuk, Sergiy
Joshi, Amit
author_facet Shafiee, Shayan
Jagtap, Jaidip
Zayats, Mykhaylo
Epperlein, Jonathan
Banerjee, Anjishnu
Geurts, Aron
Flister, Michael
Zhuk, Sergiy
Joshi, Amit
author_sort Shafiee, Shayan
collection PubMed
description SIMPLE SUMMARY: Breast cancer is a disease that is affected by both the tumor cells and the host environment. It is well known that the tumor blood vessels are aberrant in structure and function due to rapid angiogenesis, and this aberrant vasculature plays a major role in drug delivery and therapy response of breast cancer. Dll4 is a protein that helps control the growth of blood vessels in tumors. This study used near-infrared optical imaging and a novel machine learning framework to determine if Dll4 levels can be predicted from simple noninvasive imaging assays. The eventual results of this study may help physicians decide if a given triple-negative breast cancer patient will benefit from a Dll4 targeted therapy. ABSTRACT: Delta like canonical notch ligand 4 (Dll4) expression levels in tumors are known to affect the efficacy of cancer therapies. This study aimed to develop a model to predict Dll4 expression levels in tumors using dynamic enhanced near-infrared (NIR) imaging with indocyanine green (ICG). Two rat-based consomic xenograft (CXM) strains of breast cancer with different Dll4 expression levels and eight congenic xenograft strains were studied. Principal component analysis (PCA) was used to visualize and segment tumors, and modified PCA techniques identified and analyzed tumor and normal regions of interest (ROIs). The average NIR intensity for each ROI was calculated from pixel brightness at each time interval, yielding easily interpretable features including the slope of initial ICG uptake, time to peak perfusion, and rate of ICG intensity change after reaching half-maximum intensity. Machine learning algorithms were applied to select discriminative features for classification, and model performance was evaluated with a confusion matrix, receiver operating characteristic curve, and area under the curve. The selected machine learning methods accurately identified host Dll4 expression alterations with sensitivity and specificity above 90%. This may enable stratification of patients for Dll4 targeted therapies. NIR imaging with ICG can noninvasively assess Dll4 expression levels in tumors and aid in effective decision making for cancer therapy.
format Online
Article
Text
id pubmed-10000786
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-100007862023-03-11 Dynamic NIR Fluorescence Imaging and Machine Learning Framework for Stratifying High vs. Low Notch-Dll4 Expressing Host Microenvironment in Triple-Negative Breast Cancer Shafiee, Shayan Jagtap, Jaidip Zayats, Mykhaylo Epperlein, Jonathan Banerjee, Anjishnu Geurts, Aron Flister, Michael Zhuk, Sergiy Joshi, Amit Cancers (Basel) Article SIMPLE SUMMARY: Breast cancer is a disease that is affected by both the tumor cells and the host environment. It is well known that the tumor blood vessels are aberrant in structure and function due to rapid angiogenesis, and this aberrant vasculature plays a major role in drug delivery and therapy response of breast cancer. Dll4 is a protein that helps control the growth of blood vessels in tumors. This study used near-infrared optical imaging and a novel machine learning framework to determine if Dll4 levels can be predicted from simple noninvasive imaging assays. The eventual results of this study may help physicians decide if a given triple-negative breast cancer patient will benefit from a Dll4 targeted therapy. ABSTRACT: Delta like canonical notch ligand 4 (Dll4) expression levels in tumors are known to affect the efficacy of cancer therapies. This study aimed to develop a model to predict Dll4 expression levels in tumors using dynamic enhanced near-infrared (NIR) imaging with indocyanine green (ICG). Two rat-based consomic xenograft (CXM) strains of breast cancer with different Dll4 expression levels and eight congenic xenograft strains were studied. Principal component analysis (PCA) was used to visualize and segment tumors, and modified PCA techniques identified and analyzed tumor and normal regions of interest (ROIs). The average NIR intensity for each ROI was calculated from pixel brightness at each time interval, yielding easily interpretable features including the slope of initial ICG uptake, time to peak perfusion, and rate of ICG intensity change after reaching half-maximum intensity. Machine learning algorithms were applied to select discriminative features for classification, and model performance was evaluated with a confusion matrix, receiver operating characteristic curve, and area under the curve. The selected machine learning methods accurately identified host Dll4 expression alterations with sensitivity and specificity above 90%. This may enable stratification of patients for Dll4 targeted therapies. NIR imaging with ICG can noninvasively assess Dll4 expression levels in tumors and aid in effective decision making for cancer therapy. MDPI 2023-02-25 /pmc/articles/PMC10000786/ /pubmed/36900252 http://dx.doi.org/10.3390/cancers15051460 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Shafiee, Shayan
Jagtap, Jaidip
Zayats, Mykhaylo
Epperlein, Jonathan
Banerjee, Anjishnu
Geurts, Aron
Flister, Michael
Zhuk, Sergiy
Joshi, Amit
Dynamic NIR Fluorescence Imaging and Machine Learning Framework for Stratifying High vs. Low Notch-Dll4 Expressing Host Microenvironment in Triple-Negative Breast Cancer
title Dynamic NIR Fluorescence Imaging and Machine Learning Framework for Stratifying High vs. Low Notch-Dll4 Expressing Host Microenvironment in Triple-Negative Breast Cancer
title_full Dynamic NIR Fluorescence Imaging and Machine Learning Framework for Stratifying High vs. Low Notch-Dll4 Expressing Host Microenvironment in Triple-Negative Breast Cancer
title_fullStr Dynamic NIR Fluorescence Imaging and Machine Learning Framework for Stratifying High vs. Low Notch-Dll4 Expressing Host Microenvironment in Triple-Negative Breast Cancer
title_full_unstemmed Dynamic NIR Fluorescence Imaging and Machine Learning Framework for Stratifying High vs. Low Notch-Dll4 Expressing Host Microenvironment in Triple-Negative Breast Cancer
title_short Dynamic NIR Fluorescence Imaging and Machine Learning Framework for Stratifying High vs. Low Notch-Dll4 Expressing Host Microenvironment in Triple-Negative Breast Cancer
title_sort dynamic nir fluorescence imaging and machine learning framework for stratifying high vs. low notch-dll4 expressing host microenvironment in triple-negative breast cancer
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10000786/
https://www.ncbi.nlm.nih.gov/pubmed/36900252
http://dx.doi.org/10.3390/cancers15051460
work_keys_str_mv AT shafieeshayan dynamicnirfluorescenceimagingandmachinelearningframeworkforstratifyinghighvslownotchdll4expressinghostmicroenvironmentintriplenegativebreastcancer
AT jagtapjaidip dynamicnirfluorescenceimagingandmachinelearningframeworkforstratifyinghighvslownotchdll4expressinghostmicroenvironmentintriplenegativebreastcancer
AT zayatsmykhaylo dynamicnirfluorescenceimagingandmachinelearningframeworkforstratifyinghighvslownotchdll4expressinghostmicroenvironmentintriplenegativebreastcancer
AT epperleinjonathan dynamicnirfluorescenceimagingandmachinelearningframeworkforstratifyinghighvslownotchdll4expressinghostmicroenvironmentintriplenegativebreastcancer
AT banerjeeanjishnu dynamicnirfluorescenceimagingandmachinelearningframeworkforstratifyinghighvslownotchdll4expressinghostmicroenvironmentintriplenegativebreastcancer
AT geurtsaron dynamicnirfluorescenceimagingandmachinelearningframeworkforstratifyinghighvslownotchdll4expressinghostmicroenvironmentintriplenegativebreastcancer
AT flistermichael dynamicnirfluorescenceimagingandmachinelearningframeworkforstratifyinghighvslownotchdll4expressinghostmicroenvironmentintriplenegativebreastcancer
AT zhuksergiy dynamicnirfluorescenceimagingandmachinelearningframeworkforstratifyinghighvslownotchdll4expressinghostmicroenvironmentintriplenegativebreastcancer
AT joshiamit dynamicnirfluorescenceimagingandmachinelearningframeworkforstratifyinghighvslownotchdll4expressinghostmicroenvironmentintriplenegativebreastcancer