Electronic medical record-based deep data cleaning and phenotyping improve the diagnostic validity and mortality assessment of infective endocarditis: medical big data initiative of CMUH

被引:17
|
作者
Chiang, Hsiu-Yin
Liang, Li-Ying
Lin, Che-Chen
Chen, Yi-Jin
Wu, Min-Yen
Chen, Sheng-Hsuan
Wu, Pin-Hua
Kuo, Chin-Chi
Chi, Chih-Yu
机构
[1] Big Data Center, China Medical University Hospital, Taichung
[2] Division of Infectious Diseases, Department of Internal Medicine, China Medical University Hospital, Taichung
[3] Department of Medical Research, China Medical University Hospital, Taichung
[4] Department of Computer Science, National Tsing-Hua University, Hsinchu
[5] Kidney Institute and Division of Nephrology, Department of Internal Medicine, China Medical University Hospital, Taichung
[6] College of Medicine, China Medical University, Taichung
来源
BIOMEDICINE-TAIWAN | 2021年 / 11卷 / 03期
关键词
Disease phenotyping; Electronic medical record; Infective endocarditis; International Classification of Diseases; Positive predictive value; IN-HOSPITAL MORTALITY; TRENDS; PREDICTORS; ACCURACY;
D O I
10.37796/2211-8039.1267
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background: International Classification of Diseases (ICD) code-based claims databases are often used to study infective endocarditis (IE). However, the quality of ICD coding can influence the reliability of IE research. The impact of complementing the ICD-only approach with data extracted from electronic medical records (EMRs) has yet to be explored. Methods: We selected the information of adult patients with discharge ICD codes for IE (ICD-9: 421, 112.81, 036.42, 098.84, 115.04, 115.14, 115.94, 424.9; ICD-10: I33, I38, I39) during 2005-2016 in China Medical University Hospital. Data extraction was conducted on the basis of the modified Duke criteria to establish a reference group comprising patients with definite or possible IE. Clinical characteristics and in-hospital mortality were compared between ICD-identified and Duke-confirmed cases. The positive predictive value (PPV) was used to quantify the IE identification performance of various phenotyping algorithms. Results: A total of 593 patients with discharge ICD codes for IE were identified, only 56.7% met the modified Duke criteria. The crude in-hospital mortality for Duke-confirmed and Duke-rejected IE were 24.4% and 8.2%, respectively. The adjusted in-hospital mortality for ICD-identified IE was lower than that for Duke-confirmed IE by a difference of 5.1%. The best PPV was achieved (0.90, 95% CI 0.86-0.93) when major components of the Duke criteria (positive blood culture and vegetation) were integrated with ICD codes. Conclusion: Integrating EMR data can considerably improve the accuracy of ICD-only approaches in phenotyping IE, which can improve the validity of EMR-based studies and their applications, including real-time surveillance and clinical decision support.
引用
下载
收藏
页码:59 / 67
页数:11
相关论文
共 16 条
  • [1] Commentary: EyeSmart electronic medical record-based uveitis pattern A big data analysis
    Das, Dipankar
    INDIAN JOURNAL OF OPHTHALMOLOGY, 2022, 70 (04) : 1267 - 1268
  • [2] Overcoming the Challenges of Unstructured Data in Multisite, Electronic Medical Record-based Abstraction
    Polnaszek, Brock
    Gilmore-Bykovskyi, Andrea
    Hovanes, Melissa
    Roiland, Rachel
    Ferguson, Patrick
    Brown, Roger
    Kind, Amy J. H.
    MEDICAL CARE, 2016, 54 (10) : E65 - E72
  • [3] Implementation of a resident night float system in a surgery department in Korea for 6 months: electronic medical record-based big data analysis and medical staff survey
    Yu, Hyeong Won
    Choi, June Young
    Park, Young Suk
    Park, Hyung Sub
    Choi, Youngrok
    Ahn, Sang-Hoon
    Kang, Eunyoung
    Oh, Heung-Kwon
    Kim, Eun-Kyu
    Cho, Jai Young
    Kim, Duck-Woo
    Park, Do Joong
    Yoon, Yoo-Seok
    Kang, Sung Bum
    Kim, Hyung-Ho
    Han, Ho-Seong
    Lee, Taeseung
    ANNALS OF SURGICAL TREATMENT AND RESEARCH, 2019, 96 (05) : 209 - 215
  • [4] Research on Basic Clinical Treatment Pattern Mining Based on Electronic Medical Record Big Data
    Lu, Quan
    Zheng, Xiaoying
    Chen, Jing
    2023 IEEE 8TH INTERNATIONAL CONFERENCE ON BIG DATA ANALYTICS, ICBDA, 2023, : 57 - 61
  • [5] CREATION OF A DATA QUALITY FRAMEWORK FOR A UNITED STATES ELECTRONIC MEDICAL RECORD-BASED REGISTRY FOR INDIVIDUALS WITH SPINAL MUSCULAR ATROPHY
    Whitmire, S.
    Welsh, E. F.
    Belter, L.
    Rai, A. K.
    Berger, A.
    Curry, M.
    Schroth, M.
    VALUE IN HEALTH, 2024, 27 (06) : S361 - S361
  • [6] Assessing seizure burden in pediatric epilepsy using an electronic medical record-based tool through a common data element approach
    Fitzgerald, Mark P.
    Kaufman, Michael C.
    Massey, Shavonne L.
    Fridinger, Sara
    Prelack, Marisa
    Ellis, Colin
    Ortiz-Gonzalez, Xilma
    Fried, Lawrence E.
    DiGiovine, Marissa P.
    Melamed, Susan
    Malcolm, Marissa
    Banwell, Brenda
    Stephenson, Donna
    Witzman, Stephanie M.
    Gonzalez, Alexander
    Dlugos, Dennis
    Kessler, Sudha Kilaru
    Goldberg, Ethan M.
    Abend, Nicholas S.
    Helbig, Ingo
    EPILEPSIA, 2021, 62 (07) : 1617 - 1628
  • [7] Development and Temporal Validation of an Electronic Medical Record-Based Insomnia Prediction Model Using Data from a Statewide Health Information Exchange
    Holler, Emma
    Chekani, Farid
    Ai, Jizhou
    Meng, Weilin
    Khandker, Rezaul Karim
    Ben Miled, Zina
    Owora, Arthur
    Dexter, Paul
    Campbell, Noll
    Solid, Craig
    Boustani, Malaz
    JOURNAL OF CLINICAL MEDICINE, 2023, 12 (09)
  • [8] Obstetric Imaging Diagnostic Platform Based on Cloud Computing Technology Under the Background of Smart Medical Big Data and Deep Learning
    Lie, Weiwei
    Jiang, Bin
    Zhao, Wenjing
    IEEE ACCESS, 2020, 8 : 78265 - 78278
  • [9] Treatment Patterns and Outcomes Among Patients with Higher-Risk Myelodysplastic Syndromes Treated in a Real-World Setting: Electronic Medical Record-Based Data
    Bell, Jill A.
    Galaznik, Aaron
    Farrelly, Eileen
    Blazer, Marlo
    Seal, Brian
    Shih, Huai-Che
    Ogbonnaya, Augustina
    Eaddy, Michael
    Dezube, Bruce J.
    BLOOD, 2016, 128 (22)
  • [10] Validation of a Deep Learning-Based Model to Predict Lung Cancer Risk Using Chest Radiographs and Electronic Medical Record Data
    Raghu, Vineet K.
    Walia, Anika S.
    Zinzuwadia, Aniket N.
    Goiffon, Reece J.
    Shepard, Jo-Anne O.
    Aerts, Hugo J. W. L.
    Lennes, Inga T.
    Lu, Michael T.
    JAMA NETWORK OPEN, 2022, 5 (12) : E2248793