Litcius/Paper detail

Semi-supervised learning in cancer diagnostics

Jan‐Niklas Eckardt, Martin Bornhäuser, Karsten Wendt, Jan Moritz Middeke

2022Frontiers in Oncology40 citationsDOIOpen Access PDF

Abstract

In cancer diagnostics, a considerable amount of data is acquired during routine work-up. Recently, machine learning has been used to build classifiers that are tasked with cancer detection and aid in clinical decision-making. Most of these classifiers are based on supervised learning (SL) that needs time- and cost-intensive manual labeling of samples by medical experts for model training. Semi-supervised learning (SSL), however, works with only a fraction of labeled data by including unlabeled samples for information abstraction and thus can utilize the vast discrepancy between available labeled data and overall available data in cancer diagnostics. In this review, we provide a comprehensive overview of essential functionalities and assumptions of SSL and survey key studies with regard to cancer care differentiating between image-based and non-image-based applications. We highlight current state-of-the-art models in histopathology, radiology and radiotherapy, as well as genomics. Further, we discuss potential pitfalls in SSL study design such as discrepancies in data distributions and comparison to baseline SL models, and point out future directions for SSL in oncology. We believe well-designed SSL models to strongly contribute to computer-guided diagnostics in malignant disease by overcoming current hinderances in the form of sparse labeled and abundant unlabeled data.

Topics & Concepts

Computer scienceMachine learningArtificial intelligenceLabeled dataMedical physicsAbstractionCancerMedicinePhilosophyEpistemologyInternal medicineAI in cancer detectionRadiomics and Machine Learning in Medical ImagingCancer Genomics and Diagnostics