# A Deep Dive into Understanding Tumor Foci Classification using   Multiparametric MRI Based on Convolutional Neural Network

**Authors:** Weiwei Zong, Joon Lee, Chang Liu, Eric Carver, Aharon Feldman,, Branislava Janic, Mohamed Elshaikh, Milan Pantelic, David Hearshen, Indrin, Chetty, Benjamin Movsas, Ning Wen

arXiv: 1903.12331 · 2021-01-27

## TL;DR

This paper develops a specialized workflow for classifying prostate tumor foci using multiparametric MRI with deep learning, addressing data scarcity and interpretability issues in medical imaging.

## Contribution

It introduces a novel approach combining deep feature extraction with traditional classifiers for small, imbalanced prostate mpMRI datasets and explores model interpretability.

## Key findings

- Effective feature extraction from deep models for prostate mpMRI
- Improved classification performance on small datasets
- Insights into deep learning model interpretation for medical images

## Abstract

Deep learning models have had a great success in disease classifications using large data pools of skin cancer images or lung X-rays. However, data scarcity has been the roadblock of applying deep learning models directly on prostate multiparametric MRI (mpMRI). Although model interpretation has been heavily studied for natural images for the past few years, there has been a lack of interpretation of deep learning models trained on medical images. This work designs a customized workflow for the small and imbalanced data set of prostate mpMRI where features were extracted from a deep learning model and then analyzed by a traditional machine learning classifier. In addition, this work contributes to revealing how deep learning models interpret mpMRI for prostate cancer patients stratification.

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Source: https://tomesphere.com/paper/1903.12331