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Automated Lung Nodule Detection and Classification Using Deep Learning Combined with Multiple Strategies

机译:结合深度学习和多种策略的自动肺结节检测和分类

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摘要

Lung cancer is one of the major causes of cancer-related deaths due to its aggressive nature and delayed detections at advanced stages. Early detection of lung cancer is very important for the survival of an individual, and is a significant challenging problem. Generally, chest radiographs (X-ray) and computed tomography (CT) scans are used initially for the diagnosis of the malignant nodules; however, the possible existence of benign nodules leads to erroneous decisions. At early stages, the benign and the malignant nodules show very close resemblance to each other. In this paper, a novel deep learning-based model with multiple strategies is proposed for the precise diagnosis of the malignant nodules. Due to the recent achievements of deep convolutional neural networks (CNN) in image analysis, we have used two deep three-dimensional (3D) customized mixed link network (CMixNet) architectures for lung nodule detection and classification, respectively. Nodule detections were performed through faster R-CNN on efficiently-learned features from CMixNet and U-Net like encoder–decoder architecture. Classification of the nodules was performed through a gradient boosting machine (GBM) on the learned features from the designed 3D CMixNet structure. To reduce false positives and misdiagnosis results due to different types of errors, the final decision was performed in connection with physiological symptoms and clinical biomarkers. With the advent of the internet of things (IoT) and electro-medical technology, wireless body area networks (WBANs) provide continuous monitoring of patients, which helps in diagnosis of chronic diseases—especially metastatic cancers. The deep learning model for nodules’ detection and classification, combined with clinical factors, helps in the reduction of misdiagnosis and false positive (FP) results in early-stage lung cancer diagnosis. The proposed system was evaluated on LIDC-IDRI datasets in the form of sensitivity (94%) and specificity (91%), and better results were obatined compared to the existing methods.
机译:肺癌由于其侵略性和晚期检测的延误而成为癌症相关死亡的主要原因之一。肺癌的早期发现对于个体的生存非常重要,并且是一个重大的挑战性问题。通常,最初会使用胸部X光片和计算机断层扫描(CT)扫描来诊断恶性结节。然而,良性结节的可能存在导致错误的决定。在早期阶段,良性和恶性结节彼此非常相似。在本文中,提出了一种新颖的基于深度学习的,具有多种策略的模型,用于精确诊断恶性结节。由于深度卷积神经网络(CNN)在图像分析方面的最新成就,我们分别使用两种深度三维(3D)定制混合链接网络(CMixNet)架构进行肺结节检测和分类。通过更快的R-CNN对CMixNet和U-Net高效学习的功能(例如编码器-解码器体系结构)进行结节检测。结节的分类是通过梯度增强机(GBM)对从设计的3D CMixNet结构中学到的特征进行的。为了减少由于不同类型的错误而导致的假阳性和误诊结果,针对生理症状和临床生物标记物做出了最终决定。随着物联网(IoT)和电子医疗技术的出现,无线人体局域网(WBAN)提供了对患者的连续监控,从而有助于诊断慢性疾病,尤其是转移性癌症。用于结节检测和分类的深度学习模型,结合临床因素,有助于减少早期肺癌诊断中的误诊和假阳性(FP)结果。该系统在LIDC-IDRI数据集上以敏感性(94%)和特异性(91%)的形式进行了评估,与现有方法相比,获得了更好的结果。

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