2017
DOI: 10.2147/nss.s130141
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Big data in sleep medicine: prospects and pitfalls in phenotyping

Abstract: Clinical polysomnography (PSG) databases are a rich resource in the era of “big data” analytics. We explore the uses and potential pitfalls of clinical data mining of PSG using statistical principles and analysis of clinical data from our sleep center. We performed retrospective analysis of self-reported and objective PSG data from adults who underwent overnight PSG (diagnostic tests, n=1835). Self-reported symptoms overlapped markedly between the two most common categories, insomnia and sleep apnea, with the … Show more

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Cited by 23 publications
(7 citation statements)
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“…“Real life” and real-time behavioral (sensor-based), molecular, digital/computational, and epidemiological big data represent the sources of an impressive wealth of information that can be exploited in order to advance the field of sleep research [70,71,72].…”
Section: Discussionmentioning
confidence: 99%
“…“Real life” and real-time behavioral (sensor-based), molecular, digital/computational, and epidemiological big data represent the sources of an impressive wealth of information that can be exploited in order to advance the field of sleep research [70,71,72].…”
Section: Discussionmentioning
confidence: 99%
“… 47 , 48 On the other hand, resource shifts toward at-home diagnostics, with limited-channel devices designed for uncomplicated OSA detection, 49 are unlikely to directly support improved phenotyping efforts. Efforts to improve in-laboratory PSG-based phenotyping 43 , 50 , 51 could improve risk stratification and guide care decisions. The information contained in cardiac channels is well suited for implementation via both in-laboratory and at-home diagnostics, as cardiac physiology (either HR or ECG) is present in both clinical recording contexts.…”
Section: Discussionmentioning
confidence: 99%
“…Typically one wants to extract significant patterns, trends, interactions, and associations. Three V's are used to characterize many big data situations: Velocity (Data Acquisition speed), Volume (Amount of Data), and Variety (Number of sources to create big data sets) [155], [156].…”
Section: Big Data In Sleep Science and Medicinementioning
confidence: 99%
“…Variation across recording and scoring technologists may contribute heterogeneity despite quality efforts required in accredited laboratories. Centralized scoring common to large clinical trials may not be practical for clinical databases'' [155].…”
Section: Big Data In Sleep Science and Medicinementioning
confidence: 99%