Automatic Pulmonary Nodule Detection in CT Scans Using Convolutional Neural Networks Based on Maximum Intensity Projection
Sunyi Zheng, Jiapan Guo, Xiaonan Cui, Raymond N. J. Veldhuis, Matthijs, Oudkerk, and Peter M.A.van Ooijen

TL;DR
This paper presents a CNN-based method that uses maximum intensity projection images to improve automatic pulmonary nodule detection in CT scans, achieving high sensitivity and reducing false positives.
Contribution
The study introduces a novel CNN approach utilizing MIP images of various thicknesses to enhance nodule detection accuracy, inspired by clinical radiological practices.
Findings
Achieved 92.67% sensitivity with 1 false positive per scan.
Using thick MIP images improves detection of small nodules.
MIP-based CNNs increase sensitivity and reduce false positives.
Abstract
Accurate pulmonary nodule detection is a crucial step in lung cancer screening. Computer-aided detection (CAD) systems are not routinely used by radiologists for pulmonary nodule detection in clinical practice despite their potential benefits. Maximum intensity projection (MIP) images improve the detection of pulmonary nodules in radiological evaluation with computed tomography (CT) scans. Inspired by the clinical methodology of radiologists, we aim to explore the feasibility of applying MIP images to improve the effectiveness of automatic lung nodule detection using convolutional neural networks (CNNs). We propose a CNN-based approach that takes MIP images of different slab thicknesses (5 mm, 10 mm, 15 mm) and 1 mm axial section slices as input. Such an approach augments the two-dimensional (2-D) CT slice images with more representative spatial information that helps discriminate…
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