Proportion constrained weakly supervised histopathology image classification
Metadata
Show full item recordEditorial
Elsevier
Materia
Multiple instance learning Histology Proportion Inequality constraints Extended log-barrier
Date
2022-06-10Referencia bibliográfica
Julio Silva-Rodríguez... [et al.]. Proportion constrained weakly supervised histopathology image classification, Computers in Biology and Medicine, Volume 147, 2022, 105714, ISSN 0010-4825, [https://doi.org/10.1016/j.compbiomed.2022.105714]
Sponsorship
Spanish Government PID2019-105142RB-C2; European Commission 860627; Generalitat Valenciana/European Union through the European Regional Development Fund (ERDF) of the Valencian Community IDIFEDER/2020/030; Universitat Politecnica de ValenciaAbstract
Multiple instance learning (MIL) deals with data grouped into bags of instances, of which only the global
information is known. In recent years, this weakly supervised learning paradigm has become very popular in
histological image analysis because it alleviates the burden of labeling all cancerous regions of large Whole
Slide Images (WSIs) in detail. However, these methods require large datasets to perform properly, and many
approaches only focus on simple binary classification. This often does not match the real-world problems
where multi-label settings are frequent and possible constraints must be taken into account. In this work, we
propose a novel multi-label MIL formulation based on inequality constraints that is able to incorporate prior
knowledge about instance proportions. Our method has a theoretical foundation in optimization with logbarrier
extensions, applied to bag-level class proportions. This encourages the model to respect the proportion
ordering during training. Extensive experiments on a new public dataset of prostate cancer WSIs analysis,
SICAP-MIL, demonstrate that using the prior proportion information we can achieve instance-level results
similar to supervised methods on datasets of similar size. In comparison with prior MIL settings, our method
allows for ∼ 13% improvements in instance-level accuracy, and ∼ 3% in the multi-label mean area under the
ROC curve at the bag-level.