Diagnostic Accuracy of Machine Learning AI Architectures in Detection and Classification of Lung Cancer: A Systematic Review

被引:19
作者
Pacurari, Alina Cornelia [1 ]
Bhattarai, Sanket [2 ]
Muhammad, Abdullah [3 ]
Avram, Claudiu [4 ]
Mederle, Alexandru Ovidiu [5 ]
Rosca, Ovidiu [6 ]
Bratosin, Felix [4 ,6 ]
Bogdan, Iulia [4 ,6 ]
Fericean, Roxana Manuela [4 ,6 ]
Biris, Marius [7 ]
Olaru, Flavius [7 ]
Dumitru, Catalin [7 ]
Tapalaga, Gianina [8 ]
Mavrea, Adelina [9 ]
机构
[1] MedLife Hyperclin, Eroilor Tisa Blvd 28, Timisoara 300551, Romania
[2] KIST Med Coll, Fac Gen Med, Imadol Marg, Lalitpur 44700, Nepal
[3] Islamic Int Med Coll, Fac Gen Med, 41 7th Ave, Islamabad 46000, Pakistan
[4] Victor Babes Univ Med & Pharm Timisoara, Doctoral Sch, Timisoara 300041, Romania
[5] Victor Babes Univ Med & Pharm Timisoara, Dept Surg, Timisoara 300041, Romania
[6] Victor Babes Univ Med & Pharm Timisoara, Dept Infect Dis, Timisoara 300041, Romania
[7] Victor Babes Univ Med & Pharm Timisoara, Dept Obstet & Gynecol, Eftimie Murgu Sq 2, Timisoara 300041, Romania
[8] Victor Babes Univ Med & Pharm Timisoara, Fac Dent Med, Dept Odontotherapy & Endodont, Eftimie Murgu Sq 2, Timisoara 300041, Romania
[9] Victor Babes Univ Med & Pharm Timisoara, Dept Internal Med 1, Cardiol Clin, Eftimie Murgu Sq 2, Timisoara 300041, Romania
关键词
artificial intelligence; lung cancer; machine learning; diagnostic imaging;
D O I
10.3390/diagnostics13132145
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
The application of artificial intelligence (AI) in diagnostic imaging has gained significant interest in recent years, particularly in lung cancer detection. This systematic review aims to assess the accuracy of machine learning (ML) AI algorithms in lung cancer detection, identify the ML architectures currently in use, and evaluate the clinical relevance of these diagnostic imaging methods. A systematic search of PubMed, Web of Science, Cochrane, and Scopus databases was conducted in February 2023, encompassing the literature published up until December 2022. The review included nine studies, comprising five case-control studies, three retrospective cohort studies, and one prospective cohort study. Various ML architectures were analyzed, including artificial neural network (ANN), entropy degradation method (EDM), probabilistic neural network (PNN), support vector machine (SVM), partially observable Markov decision process (POMDP), and random forest neural network (RFNN). The ML architectures demonstrated promising results in detecting and classifying lung cancer across different lesion types. The sensitivity of the ML algorithms ranged from 0.81 to 0.99, while the specificity varied from 0.46 to 1.00. The accuracy of the ML algorithms ranged from 77.8% to 100%. The AI architectures were successful in differentiating between malignant and benign lesions and detecting small-cell lung cancer (SCLC) and non-small-cell lung cancer (NSCLC). This systematic review highlights the potential of ML AI architectures in the detection and classification of lung cancer, with varying levels of diagnostic accuracy. Further studies are needed to optimize and validate these AI algorithms, as well as to determine their clinical relevance and applicability in routine practice.
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页数:12
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