| Literature DB >> 31134468 |
A Sammani1, M Jansen2, M Linschoten3, A Bagheri3,4, N de Jonge3, H Kirkels3, L W van Laake3, A Vink5, J P van Tintelen2, D Dooijes2, A S J M Te Riele3, M Harakalova3,5, A F Baas2, F W Asselbergs3,6,7.
Abstract
INTRODUCTION: Despite major advances in our understanding of genetic cardiomyopathies, they remain the leading cause of premature sudden cardiac death and end-stage heart failure in persons under the age of 60 years. Integrated research databases based on a large number of patients may provide a scaffold for future research. Using routine electronic health records and standardised biobanking, big data analysis on a larger number of patients and investigations are possible. In this article, we describe the UNRAVEL research data platform embedded in routine practice to facilitate research in genetic cardiomyopathies.Entities:
Keywords: Big data analytics; Biobanking; Cardiomyopathy; Electronic health record; Machine learning; Research data platform
Year: 2019 PMID: 31134468 PMCID: PMC6712144 DOI: 10.1007/s12471-019-1288-4
Source DB: PubMed Journal: Neth Heart J ISSN: 1568-5888 Impact factor: 2.380
Fig. 1Schematic overview of different types of included data. In short, data on investigations and metadata are automatically extracted after informed consent has been provided. Additionally, patient demographics and specific events, such as date of admission, are included. Information from the municipality registry can be requested concerning, for example, death
Fig. 2Temporal character of health care data. Schematic overview of a temporal window in which patients visit the centres. In contrast to manually maintained registries where data may be disregarded, the UNRAVEL research data platform includes all (meta)data and investigations. ECG electrocardiogram, MRI magnetic resonance imaging, Hb haemoglobin, BNP brain natriuretic peptide, CRP C-reactive protein
Fig. 3Two data tables from the UNRAVEL research data platform as samples of electrocardiogram and echocardiogram output in SAS enterprise guide. ECG electrocardiogram, ECH echocardiogram
Fig. 4Sample data from the text-mining tool, where based on the clinical notes in the electronic health records (DECURSUS) an output file is created with different standardised variables, such as arterial hypertension, diabetes and dyslipidaemia. Variables are harmonised with the German TORCH registry, but can be changed as deemed necessary. The application is written for Dutch cardiovascular notes
Clinical characteristics and available tests of 828 patients included in UNRAVEL. Data are presented as number (median, IQR)
| Male | 480 (58%) |
| Median age | 57 years (IQR 45–67) |
|
| |
| Heart failure | 356 |
| DCMP | 222 |
| HCMP | 38 |
| Cardiooncology | 95 |
| Not specified | 308 |
| Cardiogenetic screening | 165 |
| Cardiac ultrasound images | 3619 (12, IQR 5–18) |
| Electrocardiograms | 18,565 (74, IQR 32–105 |
|
| 20,318 |
| Chest radiography | 512 |
| CT thorax | 274 (7, IQR 3–15 |
| MRI cardiac | 389 (2, IQR 1–3 |
| Laboratory tests | 650,000 |
| Biobanking | 267 |
|
| 241 |
| LVAD | 46 |
| ICD/CRT | 195 |
| Heart transplantation | 72 |
|
| 323 |
|
| 76 |
|
| 54 |
|
| 41 |
|
| 38 |
|
| 13 |
|
| 10 |
| Other | 91 |
IQR interquartile range, EHR electronic health record, DCMP dilated cardiomyopathy, HCMP hypertrophic cardiomyopathy, CT computed tomography, MRI magnetic resonance imaging, LVAD left ventricular assist device, ICD internal cardiac defibrillator, CRT cardiac resynchronisation therapy
MRI cardiac includes both MRI cardiac and stress MRI (adenosine/dobutamine). Radiological examinations include all examinations performed in-house, e.g. chest, abdominal, thyroid radiography etc