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      An exploratory data quality analysis of time series physiologic signals using a large-scale intensive care unit database

      brief-report

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          Abstract

          Physiological data, such as heart rate and blood pressure, are critical to clinical decision-making in the intensive care unit (ICU). Vital signs data, which are available from electronic health records, can be used to diagnose and predict important clinical outcomes; While there have been some reports on the data quality of nurse-verified vital sign data, little has been reported on the data quality of higher frequency time-series vital signs acquired in ICUs, that would enable such predictive modeling. In this study, we assessed the data quality issues, defined as the completeness, accuracy, and timeliness, of minute-by-minute time series vital signs data within the MIMIC-III data set, captured from 16009 patient-ICU stays and corresponding to 9410 unique adult patients. We measured data quality of four time-series vital signs data streams in the MIMIC-III data set: heart rate (HR), respiratory rate (RR), blood oxygen saturation (SpO2), and arterial blood pressure (ABP). Approximately, 30% of patient-ICU stays did not have at least 1 min of data during the time-frame of the ICU stay for HR, RR, and SpO2. The percentage of patient-ICU stays that did not have at least 1 min of ABP data was ∼56%. We observed ∼80% coverage of the total duration of the ICU stay for HR, RR, and SpO2. Finally, only 12.5%%, 9.9%, 7.5%, and 4.4% of ICU lengths of stay had ≥ 99% data available for HR, RR, SpO2, and ABP, respectively, that would meet the three data quality requirements we looked into in this study. Our findings on data completeness, accuracy, and timeliness have important implications for data scientists and informatics researchers who use time series vital signs data to develop predictive models of ICU outcomes.

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          Most cited references17

          • Record: found
          • Abstract: found
          • Article: found
          Is Open Access

          MIMIC-III, a freely accessible critical care database

          MIMIC-III (‘Medical Information Mart for Intensive Care’) is a large, single-center database comprising information relating to patients admitted to critical care units at a large tertiary care hospital. Data includes vital signs, medications, laboratory measurements, observations and notes charted by care providers, fluid balance, procedure codes, diagnostic codes, imaging reports, hospital length of stay, survival data, and more. The database supports applications including academic and industrial research, quality improvement initiatives, and higher education coursework.
            • Record: found
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            • Article: not found

            The completeness of the Swedish Cancer Register: a sample survey for year 1998.

            The Swedish Cancer Register (SCR) is used extensively for monitoring cancer incidence and survival and for research purposes. Completeness and reliability of cancer registration are thus of great importance for all types of use of the cancer register. The aim of the study was to estimate the overall coverage of malignant cancer cases in 1998 and to reveal possible reasons behind non-reporting. We selected all malignant cancer cases in the Hospital Discharge Register (HDR) from 1998 and compared these records to those reported to the SCR. There were 43,761 discharges for 42,010 individuals of whom 3,429 individuals were not recorded in the SCR. From these 3 429 records we randomly selected 202 patients for review of their medical records to determine whether they should have been registered on the SCR as incident cases in 1998. About half of the 202 cases (93 malignant and 8 benign) should have been reported, which translates into an additional 1 579 malignant cases (95% CI 1 349-1 808), or 3.7% of the cases reported in 1998. The crude incidence rate for males and females combined would increase from 493 per 100,000 to 511 (95% CI 508-514) if these cases were taken into account. The overall completeness of the SCR is high and comparable to other high quality registers in Northern Europe. For most uses in epidemiological or public health surveillance, the underreporting will be without major impact. However, for specific research questions our findings have implications, as the degree of underreporting is site specific, increases with age, and does not seem to be random, as diagnoses without histology or cytology verification are overrepresented. An annual comparison of the SCR against the HDR could point to hospitals, geographic areas or specific diagnoses where organizational and administrative changes should be introduced to improve reporting.
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              Early prediction of circulatory failure in the intensive care unit using machine learning

                Author and article information

                Journal
                JAMIA Open
                JAMIA Open
                jamiaoa
                JAMIA Open
                Oxford University Press
                2574-2531
                July 2021
                02 August 2021
                02 August 2021
                : 4
                : 3
                : ooab057
                Affiliations
                [1 ] Department of Anesthesiology and Critical Care Medicine, Johns Hopkins School of Medicine , Baltimore, Maryland USA
                [2 ] Department of Epidemiology, Johns Hopkins Bloomberg School of Public Health , Baltimore, Maryland, USA
                [3 ] Department of Computer Science, Johns Hopkins Whiting School of Engineering , Baltimore, Maryland, USA
                [4 ] Department of Clinical Science, Kaiser Permanente Bernard J. Tyson School of Medicine , Pasadena, California, USA
                [5 ] Department of Health Policy and Management, Johns Hopkins Bloomberg School of Public Health , Baltimore, Maryland, USA
                [6 ] Division of Health Sciences Informatics, Johns Hopkins School of Medicine , Baltimore, Maryland, USA
                Author notes
                Corresponding Author: Ali Sobhi Afshar, PhD, Department of Anesthesiology and Critical Care Medicine, Johns Hopkins School of Medicine, 600 N Wolfe St, Baltimore, MD 21205, USA ( afshar@ 123456jhu.edu )
                Article
                ooab057
                10.1093/jamiaopen/ooab057
                8327372
                34350392
                6d36ba7f-46f7-4907-a9bf-5fc406c1ccbf
                © The Author(s) 2021. Published by Oxford University Press on behalf of the American Medical Informatics Association.

                This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License ( http://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com

                History
                : 27 March 2021
                : 04 June 2021
                : 30 June 2021
                : 02 July 2021
                Page count
                Pages: 6
                Funding
                Funded by: TEDCO Maryland Innovation Initiative;
                Award ID: 2019-MII-5066
                Funded by: Johns Hopkins Center for Population Health IT (CPHIT);
                Categories
                Brief Communications
                AcademicSubjects/SCI01530
                AcademicSubjects/MED00010
                AcademicSubjects/SCI01060

                physiologic monitoring,data quality,intensive care unit

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