Improving Computer-aided Detection using Convolutional Neural Networks and Random View Aggregation
Holger R. Roth, Le Lu, Jiamin Liu, Jianhua Yao, Ari Seff, Kevin, Cherry, Lauren Kim, Ronald M. Summers

TL;DR
This paper introduces a two-tiered framework using convolutional neural networks and random view sampling to enhance computer-aided detection accuracy across various medical imaging tasks, significantly reducing false positives while maintaining high sensitivity.
Contribution
The study presents a novel two-stage CADe system that leverages deep ConvNets with random view aggregation, improving detection performance across multiple medical imaging applications.
Findings
CADe sensitivity increased from 57% to 70% for metastases.
Sensitivity improved from 43% to 77% for lymph nodes.
Sensitivity rose from 58% to 75% for colonic polyps.
Abstract
Automated computer-aided detection (CADe) in medical imaging has been an important tool in clinical practice and research. State-of-the-art methods often show high sensitivities but at the cost of high false-positives (FP) per patient rates. We design a two-tiered coarse-to-fine cascade framework that first operates a candidate generation system at sensitivities of 100% but at high FP levels. By leveraging existing CAD systems, coordinates of regions or volumes of interest (ROI or VOI) for lesion candidates are generated in this step and function as input for a second tier, which is our focus in this study. In this second stage, we generate 2D (two-dimensional) or 2.5D views via sampling through scale transformations, random translations and rotations with respect to each ROI's centroid coordinates. These random views are used to train deep convolutional neural network…
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