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Bias and Class Imbalance in Oncologic Data—Towards Inclusive and Transferrable AI in Large Scale Oncology Data Sets

Erdal Taşçı, Ying Zhuge, Kevin Camphausen, Andra Krauze

2022Cancers102 citationsDOIOpen Access PDF

Abstract

Recent technological developments have led to an increase in the size and types of data in the medical field derived from multiple platforms such as proteomic, genomic, imaging, and clinical data. Many machine learning models have been developed to support precision/personalized medicine initiatives such as computer-aided detection, diagnosis, prognosis, and treatment planning by using large-scale medical data. Bias and class imbalance represent two of the most pressing challenges for machine learning-based problems, particularly in medical (e.g., oncologic) data sets, due to the limitations in patient numbers, cost, privacy, and security of data sharing, and the complexity of generated data. Depending on the data set and the research question, the methods applied to address class imbalance problems can provide more effective, successful, and meaningful results. This review discusses the essential strategies for addressing and mitigating the class imbalance problems for different medical data types in the oncologic domain.

Topics & Concepts

Class (philosophy)Computer sciencePrecision medicineData scienceData sharingData setPersonalized medicineScale (ratio)Set (abstract data type)Field (mathematics)Machine learningDomain (mathematical analysis)Data securityData miningArtificial intelligenceBioinformaticsMedicineComputer securityPure mathematicsEncryptionMathematicsBiologyAlternative medicineQuantum mechanicsPhysicsProgramming languagePathologyMathematical analysisImbalanced Data Classification TechniquesArtificial Intelligence in HealthcareMedical Coding and Health Information
Bias and Class Imbalance in Oncologic Data—Towards Inclusive and Transferrable AI in Large Scale Oncology Data Sets | Litcius