Reproducibility of artificial intelligence models in computed tomography of the head: a quantitative analysis

被引:0
|
作者
Felix Gunzer
Michael Jantscher
Eva M. Hassler
Thomas Kau
Gernot Reishofer
机构
[1] Medical University Graz,Division of Neuroradiology, Vascular and Interventional Radiology, Department of Radiology
[2] Know-Center GmbH,Research Center for Data
[3] Landeskrankenhaus Villach,Driven Business Big Data Analytics
[4] Medical University Graz,Department of Radiology
[5] BioTechMed Graz,Department of Radiology
来源
关键词
Artificial intelligence; Head CT; Reproducibility; Epidemiology; Machine learning;
D O I
暂无
中图分类号
学科分类号
摘要
When developing artificial intelligence (AI) software for applications in radiology, the underlying research must be transferable to other real-world problems. To verify to what degree this is true, we reviewed research on AI algorithms for computed tomography of the head. A systematic review was conducted according to the preferred reporting items for systematic reviews and meta-analyses. We identified 83 articles and analyzed them in terms of transparency of data and code, pre-processing, type of algorithm, architecture, hyperparameter, performance measure, and balancing of dataset in relation to epidemiology. We also classified all articles by their main functionality (classification, detection, segmentation, prediction, triage, image reconstruction, image registration, fusion of imaging modalities). We found that only a minority of authors provided open source code (10.15%, n 0 7), making the replication of results difficult. Convolutional neural networks were predominantly used (32.61%, n = 15), whereas hyperparameters were less frequently reported (32.61%, n = 15). Data sets were mostly from single center sources (84.05%, n = 58), increasing the susceptibility of the models to bias, which increases the error rate of the models. The prevalence of brain lesions in the training (0.49 ± 0.30) and testing (0.45 ± 0.29) datasets differed from real-world epidemiology (0.21 ± 0.28), which may overestimate performances. This review highlights the need for open source code, external validation, and consideration of disease prevalence.
引用
收藏
相关论文
共 50 条
  • [21] Transparency and reproducibility in artificial intelligence
    Benjamin Haibe-Kains
    George Alexandru Adam
    Ahmed Hosny
    Farnoosh Khodakarami
    Levi Waldron
    Bo Wang
    Chris McIntosh
    Anna Goldenberg
    Anshul Kundaje
    Casey S. Greene
    Tamara Broderick
    Michael M. Hoffman
    Jeffrey T. Leek
    Keegan Korthauer
    Wolfgang Huber
    Alvis Brazma
    Joelle Pineau
    Robert Tibshirani
    Trevor Hastie
    John P. A. Ioannidis
    John Quackenbush
    Hugo J. W. L. Aerts
    Nature, 2020, 586 : E14 - E16
  • [22] Transparency and reproducibility in artificial intelligence
    Haibe-Kains, Benjamin
    Adam, George Alexandru
    Hosny, Ahmed
    Khodakarami, Farnoosh
    Shraddha, Thakkar
    Kusko, Rebecca
    Sansone, Susanna-Assunta
    Tong, Weida
    Wolfinger, Russ D.
    Mason, Christopher E.
    Jones, Wendell
    Dopazo, Joaquin
    Furlanello, Cesare
    Waldron, Levi
    Wang, Bo
    McIntosh, Chris
    Goldenberg, Anna
    Kundaje, Anshul
    Greene, Casey S.
    Broderick, Tamara
    Hoffman, Michael M.
    Leek, Jeffrey T.
    Korthauer, Keegan
    Huber, Wolfgang
    Brazma, Alvis
    Pineau, Joelle
    Tibshirani, Robert
    Hastie, Trevor
    Ioannidis, John P. A.
    Quackenbush, John
    Aerts, Hugo J. W. L.
    NATURE, 2020, 586 (7829) : E14 - U7
  • [23] Quantitative Evaluation of Noncontrast Computed Tomography of the Head for Assessment of Anemia
    Chaudhry, Ammar A.
    Gul, Maryam
    Chaudhry, Abbas
    Sheikh, Mubashir
    Dunkin, Jared
    JOURNAL OF COMPUTER ASSISTED TOMOGRAPHY, 2015, 39 (06) : 842 - 848
  • [24] Application of Artificial Intelligence in Cone-Beam Computed Tomography for Airway Analysis: A Narrative Review
    Ismail, Izzati Nabilah
    Subramaniam, Pram Kumar
    Adam, Khairul Bariah Chi
    Ghazali, Ahmad Badruddin
    DIAGNOSTICS, 2024, 14 (17)
  • [25] Qualitative and quantitative reproducibility of [18]fluoromethycholine PET/computed tomography in prostate cancer
    Pinto-Leite, Thomas
    Tixier, Florent
    Upadhaya, Taman
    Gallais, Christelle
    Perdrisot, Remy
    Le Rest, Catherine Cheze
    NUCLEAR MEDICINE COMMUNICATIONS, 2020, 41 (02) : 147 - 154
  • [26] Reproducibility of quantitative optical coherence tomography for stent analysis
    Gonzalo, Nieves
    Garcia-Garcia, Hector M.
    Serruys, Patrick W.
    Commissaris, Koen H.
    Bezerra, Hiram
    Gobbens, Pierre
    Costa, Marco
    Regar, Evelyn
    EUROINTERVENTION, 2009, 5 (02) : 224 - 232
  • [27] Reproducibility Of Quantitative Optical Coherence Tomography For Stent Analysis
    Gonzalo, Nieves
    Garcia-Garcia, Hector M.
    Serruys, Patrick W.
    Commissaris, Koen H.
    Bezerra, Hiram
    Gobbens, Pierre
    Costa, Marco
    Regar, Evelyn
    AMERICAN JOURNAL OF CARDIOLOGY, 2009, 104 (6A): : 55D - 56D
  • [28] Reproducibility of quantitative optical coherence tomography for stent analysis
    Lopez, N. Gonzalo
    Garcia-Garcia, H. M.
    Serruys, P. W.
    Commissaris, K.
    Bezerra, H.
    Gobbens, P.
    Costa, M.
    Regar, E.
    EUROPEAN HEART JOURNAL, 2009, 30 : 675 - 675
  • [29] COMPUTED-TOMOGRAPHY FOR THE STUDY OF BONE MASS - REPRODUCIBILITY ANALYSIS
    FARRERONS, J
    OLAZABAL, A
    RAMS, A
    NAVIDAD, AL
    MEDICINA CLINICA, 1988, 91 (10): : 361 - 364
  • [30] Using Artificial Intelligence to Predict Cirrhosis From Computed Tomography Scans
    Mazumder, Nikhilesh R.
    Enchakalody, Binu
    Zhang, Peng
    Su, Grace L.
    CLINICAL AND TRANSLATIONAL GASTROENTEROLOGY, 2023, 14 (10)