Prototype-Based Interpretable Breast Cancer Prediction Models: Analysis and Challenges

被引:0
|
作者
Pathak, Shreyasi [1 ]
Schloetterer, Jorg [2 ,4 ]
Veltman, Jeroen [3 ]
Geerdink, Jeroen [3 ]
van Keulen, Maurice [1 ]
Seifert, Christin [2 ]
机构
[1] Univ Twente, Enschede, Netherlands
[2] Philipps Univ Marburg, Marburg, Germany
[3] Hosp Grp Twente ZGT, Hengelo, Netherlands
[4] Univ Mannheim, Mannheim, Germany
来源
EXPLAINABLE ARTIFICIAL INTELLIGENCE, PT I, XAI 2024 | 2024年 / 2153卷
关键词
Explainable AI; Prototype-based models; Breast cancer prediction; Mammography; CLASSIFICATION;
D O I
10.1007/978-3-031-63787-2_2
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Deep learning models have achieved high performance in medical applications, however, their adoption in clinical practice is hindered due to their black-box nature. Using explainable AI (XAI) in high-stake medical decisions could increase their usability in clinical settings. Self-explainable models, like prototype-based models, can be especially beneficial as they are interpretable by design. However, if the learnt prototypes are of low quality then the prototype-based models are as good as black-box. Having high quality prototypes is a pre-requisite for a truly interpretable model. In this work, we propose a prototype evaluation framework for Coherence (PEF-Coh) for quantitatively evaluating the quality of the prototypes based on domain knowledge. We show the use of PEF-Coh in the context of breast cancer prediction using mammography. Existing works on prototype-based models on breast cancer prediction using mammography have focused on improving the classification performance of prototype-based models compared to black-box models and have evaluated prototype quality through anecdotal evidence. We are the first to go beyond anecdotal evidence and evaluate the quality of the mammography prototypes systematically using our PEF-Coh. Specifically, we apply three state-of-the-art prototype-based models, ProtoPNet, BRAIxProtoPNet++ and PIP-Net on mammography images for breast cancer prediction and evaluate these models w.r.t. i) classification performance, and ii) quality of the prototypes, on three public datasets. Our results show that prototype-based models are competitive with black-box models in terms of classification performance, and achieve a higher score in detecting ROIs. However, the quality of the prototypes are not yet sufficient and can be improved in aspects of relevance, purity and learning a variety of prototypes. We call the XAI community to systematically evaluate the quality of the prototypes to check their true usability in high stake decisions and improve such models further.
引用
收藏
页码:21 / 42
页数:22
相关论文
共 50 条
  • [1] Hyperparameter learning in probabilistic prototype-based models
    Schneider, Petra
    Biehl, Michael
    Hammer, Barbara
    NEUROCOMPUTING, 2010, 73 (7-9) : 1117 - 1124
  • [2] Interpretable Models to Predict Breast Cancer
    Ferreira, Pedro
    Dutra, Ines
    Salvini, Rogerio
    Burnside, Elizabeth
    2016 IEEE INTERNATIONAL CONFERENCE ON BIOINFORMATICS AND BIOMEDICINE (BIBM), 2016, : 1507 - 1511
  • [3] A Sparse Online Approach for Streaming Data Classification via Prototype-Based Kernel Models
    Coelho, David N.
    Barreto, Guilherme A.
    NEURAL PROCESSING LETTERS, 2022, 54 (03) : 1679 - 1706
  • [4] A Sparse Online Approach for Streaming Data Classification via Prototype-Based Kernel Models
    David N. Coelho
    Guilherme A. Barreto
    Neural Processing Letters, 2022, 54 : 1679 - 1706
  • [5] Analysis of Classification Algorithms for Breast Cancer Prediction
    Rajamohana, S. P.
    Umamaheswari, K.
    Karunya, K.
    Deepika, R.
    DATA MANAGEMENT, ANALYTICS AND INNOVATION, ICDMAI 2019, VOL 1, 2020, 1042 : 517 - 528
  • [6] Analysis of breast cancer prediction and visualisation using machine learning models
    Magesh G.
    Swarnalatha P.
    International Journal of Cloud Computing, 2022, 11 (01) : 43 - 60
  • [7] Prototype-based Classifier with Feature Selection and Its Design with Particle Swarm Optimization: Analysis and Comparative Studies
    Park, Byoung-Jun
    Oh, Sung-Kwun
    JOURNAL OF ELECTRICAL ENGINEERING & TECHNOLOGY, 2012, 7 (02) : 245 - 254
  • [8] Transfer Learning from Breast Cancer Detection Models for Image-Based Breast Cancer Risk Prediction
    Wagner, T.
    Klanecek, Z.
    Wang, Y. K.
    Cockmartin, L.
    Marshall, N.
    Studen, A.
    Jeraj, R.
    Bosmans, H.
    COMPUTER-AIDED DIAGNOSIS, MEDICAL IMAGING 2024, 2024, 12927
  • [9] Machine learning-based models for the prediction of breast cancer recurrence risk
    Zuo, Duo
    Yang, Lexin
    Jin, Yu
    Qi, Huan
    Liu, Yahui
    Ren, Li
    BMC MEDICAL INFORMATICS AND DECISION MAKING, 2023, 23 (01)
  • [10] Towards interpretable, medically grounded, EMR-based risk prediction models
    Twick, Isabell
    Zahavi, Guy
    Benvenisti, Haggai
    Rubinstein, Ronya
    Woods, Michael S.
    Berkenstadt, Haim
    Nissan, Aviram
    Hosgor, Enes
    Assaf, Dan
    SCIENTIFIC REPORTS, 2022, 12 (01):