CVJan 4, 2021

Classification and Segmentation of Pulmonary Lesions in CT Images Using a Combined VGG-XGBoost Method, and an Integrated Fuzzy Clustering-Level Set Technique

arXiv:2101.00948v2
Originality Incremental advance
AI Analysis

This system aims to assist clinicians in diagnosing lung abnormalities, potentially reducing diagnostic time and inaccuracy for patients.

This paper addresses the challenge of early lung cancer detection by developing a system that classifies pulmonary lesions in CT images with 96% accuracy. It also segments detected lesions using a hybrid fuzzy clustering-level set technique.

Given that lung cancer is one of the deadliest illnesses, early identification and diagnosis are critical to preserving a patient's life. However, lung illness diagnosis is time-intensive and requires the expertise of a pulmonary disease specialist, subject to a significant rate of inaccuracy. Our objective is to design a system capable of accurately detecting and classifying lung lesions and segmenting them in CT-scan images. The suggested technique extracts features automatically from the CT-scan image and then classifies them using Ensemble Gradient Boosting methods. Finally, if a lesion is detected in the CT-scan image, it is segmented using a hybrid approach based on Fuzzy Clustering and Level Set. To train and test our models we gathered a dataset that included CT images of patients residing in Mashhad, Iran. Finally, the results indicate 96% accuracy within this dataset. This approach may assist clinicians in diagnosing lung abnormalities and avoiding potential errors.

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