Document detail
ID

oai:arXiv.org:2001.08570

Topic
Quantitative Biology - Quantitativ... Computer Science - Computer Vision... Computer Science - Machine Learnin... Electrical Engineering and Systems... Statistics - Applications Statistics - Machine Learning
Author
Braman, Nathaniel Adoui, Mohammed El Vulchi, Manasa Turk, Paulette Etesami, Maryam Fu, Pingfu Bera, Kaustav Drisis, Stylianos Varadan, Vinay Plecha, Donna Benjelloun, Mohammed Abraham, Jame Madabhushi, Anant
Category

Computer Science

Year

2020

listing date

3/14/2022

Keywords
auc=0 chemotherapy pre-treatment cancer study data computer cohorts 0 neoadjuvant learning dce-mri testing model her2-targeted breast response deep
Metrics

Abstract

Predicting response to neoadjuvant therapy is a vexing challenge in breast cancer.

In this study, we evaluate the ability of deep learning to predict response to HER2-targeted neo-adjuvant chemotherapy (NAC) from pre-treatment dynamic contrast-enhanced (DCE) MRI acquired prior to treatment.

In a retrospective study encompassing DCE-MRI data from a total of 157 HER2+ breast cancer patients from 5 institutions, we developed and validated a deep learning approach for predicting pathological complete response (pCR) to HER2-targeted NAC prior to treatment.

100 patients who received HER2-targeted neoadjuvant chemotherapy at a single institution were used to train (n=85) and tune (n=15) a convolutional neural network (CNN) to predict pCR.

A multi-input CNN leveraging both pre-contrast and late post-contrast DCE-MRI acquisitions was identified to achieve optimal response prediction within the validation set (AUC=0.93).

This model was then tested on two independent testing cohorts with pre-treatment DCE-MRI data.

It achieved strong performance in a 28 patient testing set from a second institution (AUC=0.85, 95% CI 0.67-1.0, p=.0008) and a 29 patient multicenter trial including data from 3 additional institutions (AUC=0.77, 95% CI 0.58-0.97, p=0.006).

Deep learning-based response prediction model was found to exceed a multivariable model incorporating predictive clinical variables (AUC < .65 in testing cohorts) and a model of semi-quantitative DCE-MRI pharmacokinetic measurements (AUC < .60 in testing cohorts).

The results presented in this work across multiple sites suggest that with further validation deep learning could provide an effective and reliable tool to guide targeted therapy in breast cancer, thus reducing overtreatment among HER2+ patients.

;Comment: Braman and El Adoui contributed equally to this work.

33 pages, 3 figures in main text

Braman, Nathaniel,Adoui, Mohammed El,Vulchi, Manasa,Turk, Paulette,Etesami, Maryam,Fu, Pingfu,Bera, Kaustav,Drisis, Stylianos,Varadan, Vinay,Plecha, Donna,Benjelloun, Mohammed,Abraham, Jame,Madabhushi, Anant, 2020, Deep learning-based prediction of response to HER2-targeted neoadjuvant chemotherapy from pre-treatment dynamic breast MRI: A multi-institutional validation study

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