A hierarchical approach for pulmonary nodules identification from CT images using YOLO v5s nodule detection and 3D neural network classifier
Yashar Ahmadyar Razlighi, Alireza Kamali-Asl, Hossein Arabi

TL;DR
This paper presents a hierarchical framework combining YOLO v5s for initial pulmonary nodule detection with a 3D CNN classifier to improve accuracy and reduce false negatives in CT image analysis.
Contribution
The study introduces a novel hierarchical approach that integrates YOLO v5s detection with a 3D neural network classifier for enhanced pulmonary nodule identification.
Findings
Detection accuracy of 98.4% with 3D classifier
Reduced false negatives and positives in nodule detection
Effective framework for decision support in lung CT analysis
Abstract
In the first step, a pre-trained model (YOLO) was used to detect all suspicious nod-ules. The YOLO model was re-trained using 397 CT images to detect the entire nodule in CT images. To maximize the sensitivity of the model, a confidence level (the probability threshold for object detection) of 0.3 was set for nodule detection in the first phase (ensuring the entire suspicious nodules are detected from the input CT images). The aim of the hierarchy model is to detect and classify the entire lung nodules (from CT images) with a low false-negative rate. Given the outcome of the first step, we proposed a 3D CNN classifier to analyze and classify the suspicious nodules detected by the YOLO model to achieve a nodule detection framework with a very low false-negative rate. This framework was evaluated using the LUNA 16 dataset, which consists of 888 CT images containing the location of 1186…
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Taxonomy
TopicsLung Cancer Diagnosis and Treatment · Radiomics and Machine Learning in Medical Imaging · COVID-19 diagnosis using AI
