Litcius/Paper detail

Automated detection of poor-quality data: case studies in healthcare

M. Abou Dakka, Tuc Nguyen, Jonathan M. M. Hall, Sonya M. Diakiw, Matthew VerMilyea, Rebecca Linke, Michelle Perugini, Don Perugini

2021Scientific Reports30 citationsDOIOpen Access PDF

Abstract

The detection and removal of poor-quality data in a training set is crucial to achieve high-performing AI models. In healthcare, data can be inherently poor-quality due to uncertainty or subjectivity, but as is often the case, the requirement for data privacy restricts AI practitioners from accessing raw training data, meaning manual visual verification of private patient data is not possible. Here we describe a novel method for automated identification of poor-quality data, called Untrainable Data Cleansing. This method is shown to have numerous benefits including protection of private patient data; improvement in AI generalizability; reduction in time, cost, and data needed for training; all while offering a truer reporting of AI performance itself. Additionally, results show that Untrainable Data Cleansing could be useful as a triage tool to identify difficult clinical cases that may warrant in-depth evaluation or additional testing to support a diagnosis.

Topics & Concepts

Generalizability theoryComputer scienceRaw dataTriageData qualityData cleansingQuality (philosophy)Health careData miningIdentification (biology)Data scienceArtificial intelligenceRisk analysis (engineering)Metric (unit)MedicineMedical emergencyOperations managementBotanyProgramming languageEconomicsPhilosophyMathematicsStatisticsBiologyEpistemologyEconomic growthArtificial Intelligence in Healthcare and EducationAutopsy Techniques and OutcomesCOVID-19 diagnosis using AI