通过整合从 CT 扫描中提取的工程特征和深度特征推进肺结节诊断

Algorithms Pub Date : 2024-04-18 DOI:10.3390/a17040161
Wiem Safta, A. Shaffie
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引用次数: 0

摘要

加强肺癌诊断需要精确的早期检测方法。本研究介绍了一种利用计算机断层扫描(CT)进行早期肺癌识别的自动诊断系统。主要方法是整合三种不同的特征分析方法:用于纹理分析的新型三维局部八进制模式(LOP)描述符、用于提取深度特征的三维卷积神经网络(CNN)以及用于描述肺结节特征的几何特征分析。3D-LOP 方法通过分析体素关系的方向和大小,创新性地捕捉到了结节纹理,从而区分了鉴别特征。同时,3D-CNN 从原始 CT 扫描中提取深层特征,提供有关结节特征的全面见解。几何特征和结节形状评估进一步增强了这一分析,提供了潜在恶性肿瘤的整体视图。通过综合这些分析,我们的系统采用了基于概率的线性分类器来提供最终诊断结果。经过对 822 个肺图像数据库联盟(LIDC)病例的验证,该系统的表现非常出色,准确率、灵敏度、特异性和 ROC 曲线下面积(AUC)分别为 97.84%、98.11%、94.73% 和 0.9912。这些结果凸显了该系统在临床诊断方面的巨大进步潜力,它为肺癌检测提供了一种可靠的无创工具,有望通过早期诊断改善患者的预后。
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Advancing Pulmonary Nodule Diagnosis by Integrating Engineered and Deep Features Extracted from CT Scans
Enhancing lung cancer diagnosis requires precise early detection methods. This study introduces an automated diagnostic system leveraging computed tomography (CT) scans for early lung cancer identification. The main approach is the integration of three distinct feature analyses: the novel 3D-Local Octal Pattern (LOP) descriptor for texture analysis, the 3D-Convolutional Neural Network (CNN) for extracting deep features, and geometric feature analysis to characterize pulmonary nodules. The 3D-LOP method innovatively captures nodule texture by analyzing the orientation and magnitude of voxel relationships, enabling the distinction of discriminative features. Simultaneously, the 3D-CNN extracts deep features from raw CT scans, providing comprehensive insights into nodule characteristics. Geometric features and assessing nodule shape further augment this analysis, offering a holistic view of potential malignancies. By amalgamating these analyses, our system employs a probability-based linear classifier to deliver a final diagnostic output. Validated on 822 Lung Image Database Consortium (LIDC) cases, the system’s performance was exceptional, with measures of 97.84%, 98.11%, 94.73%, and 0.9912 for accuracy, sensitivity, specificity, and Area Under the ROC Curve (AUC), respectively. These results highlight the system’s potential as a significant advancement in clinical diagnostics, offering a reliable, non-invasive tool for lung cancer detection that promises to improve patient outcomes through early diagnosis.
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