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The Big Data Paradox in Clinical Practice

Pavlos Msaouel

2022Cancer Investigation35 citationsDOIOpen Access PDF

Abstract

The big data paradox is a real-world phenomenon whereby as the number of patients enrolled in a study increases, the probability that the confidence intervals from that study will include the truth decreases. This occurs in both observational and experimental studies, including randomized clinical trials, and should always be considered when clinicians are interpreting research data. Furthermore, as data quantity continues to increase in today's era of big data, the paradox is becoming more pernicious. Herein, I consider three mechanisms that underlie this paradox, as well as three potential strategies to mitigate it: (1) improving data quality; (2) anticipating and modeling patient heterogeneity; (3) including the systematic error, not just the variance, in the estimation of error intervals.

Topics & Concepts

Observational studyBig dataConfidence intervalVariance (accounting)EconometricsMedicineStatisticsPsychologyComputer scienceMathematicsData miningInternal medicineEconomicsAccountingMachine Learning in HealthcareStatistical Methods and InferenceColorectal Cancer Screening and Detection
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