Risk-Aware Machine Learning Classifier for Skin Lesion Diagnosis

被引:55
|
作者
Mobiny, Aryan [1 ]
Singh, Aditi [1 ]
Nguyen, Hien Van [1 ]
机构
[1] Univ Houston, Dept Elect & Comp Engn, Houston, TX 77004 USA
基金
美国国家科学基金会;
关键词
Bayesian deep network; model uncertainty; Monte Carlo dropout; physician-friendly machine learning; skin lesion; COMPUTER-AIDED DIAGNOSIS; LUNG NODULES; CT; DERMATOLOGISTS; PERFORMANCE; NETWORKS; OBSERVER; DROPOUT; IMAGES;
D O I
10.3390/jcm8081241
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Knowing when a machine learning system is not confident about its prediction is crucial in medical domains where safety is critical. Ideally, a machine learning algorithm should make a prediction only when it is highly certain about its competency, and refer the case to physicians otherwise. In this paper, we investigate how Bayesian deep learning can improve the performance of the machine-physician team in the skin lesion classification task. We used the publicly available HAM10000 dataset, which includes samples from seven common skin lesion categories: Melanoma (MEL), Melanocytic Nevi (NV), Basal Cell Carcinoma (BCC), Actinic Keratoses and Intraepithelial Carcinoma (AKIEC), Benign Keratosis (BKL), Dermatofibroma (DF), and Vascular (VASC) lesions. Our experimental results show that Bayesian deep networks can boost the diagnostic performance of the standard DenseNet-169 model from 81.35% to 83.59% without incurring additional parameters or heavy computation. More importantly, a hybrid physician-machine workflow reaches a classification accuracy of 90% while only referring 35% of the cases to physicians. The findings are expected to generalize to other medical diagnosis applications. We believe that the availability of risk-aware machine learning methods will enable a wider adoption of machine learning technology in clinical settings.
引用
收藏
页数:24
相关论文
共 50 条
  • [21] Risk-Aware Information Disclosure
    Armando, Alessandro
    Bezzi, Michele
    Metoui, Nadia
    Sabetta, Antonino
    DATA PRIVACY MANAGEMENT, AUTONOMOUS SPONTANEOUS SECURITY, AND SECURITY ASSURANCE, 2015, 8872 : 266 - 276
  • [22] Risk-Aware Information Retrieval
    Zhu, Jianhan
    Wang, Jun
    Taylor, Michael
    Cox, Ingemar J.
    ADVANCES IN INFORMATION RETRIEVAL, PROCEEDINGS, 2009, 5478 : 17 - +
  • [23] Risk-Aware Reinforcement Learning-Based Federated Learning for IoV Systems
    Lu, Xiaozhen
    Liu, Zhibo
    Chen, Yuhan
    Xiao, Liang
    Wang, Wei
    Wu, Qihui
    IEEE TRANSACTIONS ON MOBILE COMPUTING, 2024, 23 (12) : 14672 - 14688
  • [24] Empirical Risk-aware Machine Learning on Trojan-Horse Detection for Trusted Quantum Key Distribution Networks
    Chou, Hong-Fu
    Vu, Thang X.
    Maity, Ilora
    Garces-Socarras, Luis M.
    Gonzalez-Rios, Jorge L.
    Merlano-Duncan, Juan Carlos
    Ma, Sean Longyu
    Chatzinotas, Symeon
    Ottersten, Björn
    arXiv,
  • [25] Machine Learning of Melanocytic Skin Lesion Images
    Surowka, G.
    HUMAN-COMPUTER SYSTEMS INTERACTION: BACKGROUNDS AND APPLICATIONS, 2009, 60 : 147 - 159
  • [26] Reusing Risk-Aware Stochastic Abstract Policies in Robotic Navigation Learning
    da Silva, Valdinei Freire
    Koga, Marcelo Li
    Cozman, Fabio Gagliardi
    Reali Costa, Anna Helena
    ROBOCUP 2013: ROBOT WORLD CUP XVII, 2014, 8371 : 256 - 267
  • [27] Risk-Aware Complete Coverage Path Planning Using Reinforcement Learning
    Wijegunawardana, I. D.
    Samarakoon, S. M. Bhagya P.
    Muthugala, M. A. Viraj J.
    Elara, Mohan Rajesh
    IEEE TRANSACTIONS ON SYSTEMS MAN CYBERNETICS-SYSTEMS, 2025, 55 (04): : 2476 - 2488
  • [28] Risk-aware multi-objective optimized virtual machine placement in the cloud
    Han, Jin
    Zang, Wangyu
    Liu, Li
    Chen, Songqing
    Yu, Meng
    JOURNAL OF COMPUTER SECURITY, 2018, 26 (05) : 707 - 730
  • [29] ZEROTH-ORDER STOCHASTIC COMPOSITIONAL ALGORITHMS FOR RISK-AWARE LEARNING
    Kalogerias, Dionysios S.
    Powell, Warren B.
    SIAM JOURNAL ON OPTIMIZATION, 2022, 32 (02) : 386 - 416
  • [30] Risk-Aware Reinforcement Learning for Multi-Period Portfolio Selection
    Winkel, David
    Strauss, Niklas
    Schubert, Matthias
    Seidl, Thomas
    MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES, ECML PKDD 2022, PT VI, 2023, 13718 : 185 - 200