Beyond Supervised: The Rise of Self-Supervised Learning in Autonomous Systems

被引:0
作者
Taherdoost, Hamed [1 ,2 ]
机构
[1] Univ Canada West, Dept Arts Commun & Social Sci, Vancouver, BC V6B 1V9, Canada
[2] Global Univ Syst, GUS Inst, London EC1N 2LX, England
关键词
self-supervised learning; medical imaging; area under the curve; image analysis; anomaly detection; classification; feature extraction; pre-training; ROC CURVE; THRESHOLD; AREA; AUC;
D O I
10.3390/info15080491
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Supervised learning has been the cornerstone of many successful medical imaging applications. However, its reliance on large labeled datasets poses significant challenges, especially in the medical domain, where data annotation is time-consuming and expensive. In response, self-supervised learning (SSL) has emerged as a promising alternative, leveraging unlabeled data to learn meaningful representations without explicit supervision. This paper provides a detailed overview of supervised learning and its limitations in medical imaging, underscoring the need for more efficient and scalable approaches. The study emphasizes the importance of the area under the curve (AUC) as a key evaluation metric in assessing SSL performance. The AUC offers a comprehensive measure of model performance across different operating points, which is crucial in medical applications, where false positives and negatives have significant consequences. Evaluating SSL methods based on the AUC allows for robust comparisons and ensures that models generalize well to real-world scenarios. This paper reviews recent advances in SSL for medical imaging, demonstrating their potential to revolutionize the field by mitigating challenges associated with supervised learning. Key results show that SSL techniques, by leveraging unlabeled data and optimizing performance metrics like the AUC, can significantly improve the diagnostic accuracy, scalability, and efficiency in medical image analysis. The findings highlight SSL's capability to reduce the dependency on labeled datasets and present a path forward for more scalable and effective medical imaging solutions.
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页数:18
相关论文
共 108 条
  • [11] AUCReshaping: improved sensitivity at high-specificity
    Bhat, Sheethal
    Mansoor, Awais
    Georgescu, Bogdan
    Panambur, Adarsh B.
    Ghesu, Florin C.
    Islam, Saahil
    Packhaeuser, Kai
    Rodriguez-Salas, Dalia
    Grbic, Sasa
    Maier, Andreas
    [J]. SCIENTIFIC REPORTS, 2023, 13 (01)
  • [12] Bojarski M, 2016, Arxiv, DOI arXiv:1604.07316
  • [13] The use of the area under the roc curve in the evaluation of machine learning algorithms
    Bradley, AP
    [J]. PATTERN RECOGNITION, 1997, 30 (07) : 1145 - 1159
  • [14] Classifiers and their Metrics Quantified
    Brown, J. B.
    [J]. MOLECULAR INFORMATICS, 2018, 37 (1-2)
  • [15] Morph-SSL: Self-Supervision With Longitudinal Morphing for Forecasting AMD Progression From OCT Volumes
    Chakravarty, Arunava
    Emre, Taha
    Leingang, Oliver
    Riedl, Sophie
    Mai, Julia
    Scholl, Hendrik P. N.
    Sivaprasad, Sobha
    Rueckert, Daniel
    Lotery, Andrew
    Schmidt-Erfurth, Ursula
    Bogunovic, Hrvoje
    [J]. IEEE TRANSACTIONS ON MEDICAL IMAGING, 2024, 43 (09) : 3224 - 3239
  • [16] Chen T., 2020, BT P 37 INT C MACH L, P1597, DOI DOI 10.48550/ARXIV.2002.05709
  • [17] Self-Supervised Learning for Autonomous Vehicles Perception: A Conciliation Between Analytical and Learning Methods
    Chiaroni, Florent
    Rahal, Mohamed-Cherif
    Hueber, Nicolas
    Dufaux, Frederic
    [J]. IEEE SIGNAL PROCESSING MAGAZINE, 2021, 38 (01) : 31 - 41
  • [18] Interpreting area under the receiver operating characteristic curve
    de Hond, Anne A H
    Steyerberg, Ewout W
    van Calster, Ben
    [J]. The Lancet Digital Health, 2022, 4 (12):
  • [19] Di Liello L, 2023, Arxiv, DOI arXiv:2309.08272
  • [20] The threshold model revisited
    Djulbegovic, Benjamin
    Hozo, Iztok
    Mayrhofer, Thomas
    van den Ende, Jef
    Guyatt, Gordon
    [J]. JOURNAL OF EVALUATION IN CLINICAL PRACTICE, 2019, 25 (02) : 186 - 195