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Automated Lung Cancer Detection Using Artificial Intelligence (AI) Deep Convolutional Neural Networks: A Narrative Literature Review

机译:自动肺癌检测使用人工智能(AI)深卷积神经网络:叙事文献综述

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Lung cancer is the number one cause of cancer-related deaths in the United States as well as worldwide. Radiologists and physicians experience heavy daily workloads, thus are at high risk for burn-out.?To alleviate this burden, this narrative literature review compares the performance of four different artificial intelligence (AI) models in lung nodule cancer detection, as well as their performance to physicians/radiologists reading accuracy. A total of 648 articles were selected by two experienced?physicians with over 10 years of experience?in the fields of pulmonary critical care, and hospital medicine.?The data bases used to?search and select the articles are PubMed/MEDLINE, EMBASE, Cochrane library, Google Scholar, Web of science, IEEEXplore,?and DBLP.?The articles?selected range from the years between 2008 and 2019.?Four out of 648 articles were selected using the following inclusion criteria: 1) 18-65 years old, 2) CT chest scans, 2) lung nodule, 3) lung cancer, 3) deep learning, 4) ensemble and 5) classic methods. The exclusion criteria used in this narrative review include: 1) age greater than 65 years old, 2) positron emission tomography (PET) hybrid scans, 3) chest X-ray (CXR) and 4) genomics. The model performance outcomes metrics are measured and evaluated in sensitivity, specificity, accuracy,?receiver operator characteristic (ROC) curve, and the area under the curve (AUC). This hybrid deep-learning model is a state-of-the-art architecture, with high-performance accuracy and low false-positive results.?Future studies, comparing each model accuracy at depth is key.?Automated physician-assist systems as this model in this review article help preserve a quality doctor-patient relationship.
机译:肺癌是美国癌症相关死亡的次数和全世界。放射科医生和医生经历了繁重的日常工作量,因此燃烧的高风险。这个叙事文献综述比较了四种不同人工智能(AI)模型在肺结节癌症检测中的性能以及它们的表现表现给医生/放射科学家阅读准确性。共有648篇文章被两项经验丰富的?医生有超过10年的经验?在肺部关键护理和医院医学领域。用于搜索和选择物品的数据库是百衰/梅德林,embase, Cochrane图书馆,谷歌学者,科学网站,IEEExplore,?和DBLP.The文章?从2008年至2019年期间的几年所选的范围。使用以下纳入标准选择了648篇文章:1)18-65岁旧的,2)CT胸部扫描,2)肺结核,3)肺癌,3)深学习,4)合奏和5)经典方法。本叙事审查中使用的排除标准包括:1)年龄大于65岁,2)正电子发射断层扫描(PET)杂交扫描,3)胸X射线(CXR)和4)基因组学。测量和评估模型性能结果指标,并评估灵敏度,特异性,准确性,Δ接收器操作员特征(ROC)曲线以及曲线下的区域(AUC)。这种混合深度学习模型是一种最先进的架构,具有高性能的精度和低伪阳性结果。效果研究,比较深度的每个模型精度是钥匙.?Utomated医师辅助系统这篇评论中的型号文章有助于保持优质的医生关系。

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