Artificial intelligence applied to magnetic resonance imaging reliably detects the presence, but not the location, of meniscus tears: a systematic review and meta-analysis

被引:6
作者
Zhao, Yi [1 ]
Coppola, Andrew [1 ]
Karamchandani, Urvi [2 ]
Amiras, Dimitri [1 ,2 ]
Gupte, Chinmay M. [1 ,2 ]
机构
[1] Imperial Coll London, Sch Med, Exhibit Rd,South Kensington Campus, London SW7 2BU, England
[2] Imperial Coll London NHS Trust, London, England
关键词
Artificial intelligence; Deep learning; Magnetic resonance imaging; Meniscus tear; Diagnosis; DIAGNOSIS; CURVE; AREA; MRI;
D O I
10.1007/s00330-024-10625-7
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
ObjectivesTo review and compare the accuracy of convolutional neural networks (CNN) for the diagnosis of meniscal tears in the current literature and analyze the decision-making processes utilized by these CNN algorithms.Materials and methodsPubMed, MEDLINE, EMBASE, and Cochrane databases up to December 2022 were searched in accordance with the Preferred Reporting Items for Systematic Reviews and Meta-analysis (PRISMA) statement. Risk of analysis was used for all identified articles. Predictive performance values, including sensitivity and specificity, were extracted for quantitative analysis. The meta-analysis was divided between AI prediction models identifying the presence of meniscus tears and the location of meniscus tears.ResultsEleven articles were included in the final review, with a total of 13,467 patients and 57,551 images. Heterogeneity was statistically significantly large for the sensitivity of the tear identification analysis (I2 = 79%). A higher level of accuracy was observed in identifying the presence of a meniscal tear over locating tears in specific regions of the meniscus (AUC, 0.939 vs 0.905). Pooled sensitivity and specificity were 0.87 (95% confidence interval (CI) 0.80-0.91) and 0.89 (95% CI 0.83-0.93) for meniscus tear identification and 0.88 (95% CI 0.82-0.91) and 0.84 (95% CI 0.81-0.85) for locating the tears.ConclusionsAI prediction models achieved favorable performance in the diagnosis, but not location, of meniscus tears. Further studies on the clinical utilities of deep learning should include standardized reporting, external validation, and full reports of the predictive performances of these models, with a view to localizing tears more accurately.Clinical relevance statementMeniscus tears are hard to diagnose in the knee magnetic resonance images. AI prediction models may play an important role in improving the diagnostic accuracy of clinicians and radiologists.Key Points center dot Artificial intelligence (AI) provides great potential in improving the diagnosis of meniscus tears.center dot The pooled diagnostic performance for artificial intelligence (AI) in identifying meniscus tears was better (sensitivity 87%, specificity 89%) than locating the tears (sensitivity 88%, specificity 84%).center dot AI is good at confirming the diagnosis of meniscus tears, but future work is required to guide the management of the disease.Key Points center dot Artificial intelligence (AI) provides great potential in improving the diagnosis of meniscus tears.center dot The pooled diagnostic performance for artificial intelligence (AI) in identifying meniscus tears was better (sensitivity 87%, specificity 89%) than locating the tears (sensitivity 88%, specificity 84%).center dot AI is good at confirming the diagnosis of meniscus tears, but future work is required to guide the management of the disease.Key Points center dot Artificial intelligence (AI) provides great potential in improving the diagnosis of meniscus tears.center dot The pooled diagnostic performance for artificial intelligence (AI) in identifying meniscus tears was better (sensitivity 87%, specificity 89%) than locating the tears (sensitivity 88%, specificity 84%).center dot AI is good at confirming the diagnosis of meniscus tears, but future work is required to guide the management of the disease.
引用
收藏
页码:5954 / 5964
页数:11
相关论文
共 50 条
  • [41] Applications of artificial intelligence in the field of oral and maxillofacial pathology: a systematic review and meta-analysis
    Abdul, Nishath Sayed
    Shivakumar, Ganiga Channaiah
    Sangappa, Sunila Bukanakere
    Di Blasio, Marco
    Crimi, Salvatore
    Cicciu, Marco
    Minervini, Giuseppe
    BMC ORAL HEALTH, 2024, 24 (01)
  • [42] Ultrasound versus magnetic resonance imaging for Morton neuroma: systematic review and meta-analysis
    Bignotti, Bianca
    Signori, Alessio
    Sormani, Maria Pia
    Molfetta, Luigi
    Martinoli, Carlo
    Tagliafico, Alberto
    EUROPEAN RADIOLOGY, 2015, 25 (08) : 2254 - 2262
  • [43] Accuracy of artificial intelligence in detecting tumor bone metastases: a systematic review and meta-analysis
    Tao, Huimin
    Hui, Xu
    Zhang, Zhihong
    Zhu, Rongrong
    Wang, Ping
    Zhou, Sheng
    Yang, Kehu
    BMC CANCER, 2025, 25 (01)
  • [44] Applications of artificial intelligence in the field of oral and maxillofacial pathology: a systematic review and meta-analysis
    Nishath Sayed Abdul
    Ganiga Channaiah Shivakumar
    Sunila Bukanakere Sangappa
    Marco Di Blasio
    Salvatore Crimi
    Marco Cicciù
    Giuseppe Minervini
    BMC Oral Health, 24
  • [45] Artificial intelligence to classify ear disease from otoscopy: A systematic review and meta-analysis
    Habib, Al-Rahim
    Kajbafzadeh, Majid
    Hasan, Zubair
    Wong, Eugene
    Gunasekera, Hasantha
    Perry, Chris
    Sacks, Raymond
    Kumar, Ashnil
    Singh, Narinder
    CLINICAL OTOLARYNGOLOGY, 2022, 47 (03) : 401 - 413
  • [46] Artificial Intelligence in Endoscopy for Predicting Helicobacter pylori Infection: A Systematic Review and Meta-Analysis
    Jiang, Yiwen
    Yan, Hengxu
    Cui, Jiatong
    Yang, Kaiqiang
    An, Yue
    HELICOBACTER, 2025, 30 (02)
  • [47] Subclassification of BI-RADS 4 Magnetic Resonance Lesions: A Systematic Review and Meta-Analysis
    Li, Jianyu
    Zheng, Hui
    Cai, Weiguo
    Wang, Yanfang
    Zhang, Hanfei
    Liao, Meiyan
    JOURNAL OF COMPUTER ASSISTED TOMOGRAPHY, 2020, 44 (06) : 914 - 920
  • [48] Artificial Intelligence for Detecting Cephalometric Landmarks: A Systematic Review and Meta-analysis
    Germana de Queiroz Tavares Borges Mesquita
    Walbert A. Vieira
    Maria Tereza Campos Vidigal
    Bruno Augusto Nassif Travençolo
    Thiago Leite Beaini
    Rubens Spin-Neto
    Luiz Renato Paranhos
    Rui Barbosa de Brito Júnior
    Journal of Digital Imaging, 2023, 36 : 1158 - 1179
  • [49] Applications of Artificial Intelligence in Diagnosis of Dry Eye Disease: A Systematic Review and Meta-Analysis
    Heidari, Zahra
    Hashemi, Hassan
    Sotude, Danial
    Ebrahimi-Besheli, Kiana
    Khabazkhoob, Mehdi
    Soleimani, Mohammad
    Djalilian, Ali R.
    Yousefi, Siamak
    CORNEA, 2024, 43 (10) : 1310 - 1318
  • [50] Magnetic resonance imaging-based biomarkers of multiple sclerosis and neuromyelitis optica spectrum disorder: a systematic review and meta-analysis
    Mirmosayyeb, Omid
    Yazdan Panah, Mohammad
    Moases Ghaffary, Elham
    Vaheb, Saeed
    Ghoshouni, Hamed
    Shaygannejad, Vahid
    Pinter, Nandor K.
    JOURNAL OF NEUROLOGY, 2025, 272 (01)