| Literature DB >> 35756337 |
Timo Schulte1, Sabine Bohnet-Joschko1.
Abstract
Introduction: Health systems in high-income countries face a variety of challenges calling for a systemic approach to improve quality and efficiency. Putting people in the centre is the main idea of the WHO model of people-centred and integrated health services. Integrating health services is fuelled by an integration of health data with great potentials for decision support based on big data analytics. The research question of this paper is "How can big data analytics support people-centred and integrated health services?"Entities:
Keywords: Big Data; Personal Health Record; advanced analytics; health platform; machine Learning; people-centred and integrated health services
Year: 2022 PMID: 35756337 PMCID: PMC9205381 DOI: 10.5334/ijic.5543
Source DB: PubMed Journal: Int J Integr Care Impact factor: 2.913
Data types for big data analytics in healthcare by data generation point.
|
| ||
|---|---|---|
| DATA GENERATION POINTS | DATA TYPES | EXAMPLES ON TYPICAL DATA CONTENT |
|
| ||
| Transactions/billing with different payer organizations | Administrative data | Patient demographics, plan types, type of provider, location, … |
|
| ||
| Medical claims | In-/outpatient visits, diagnosis/procedure coding, referrals, … | |
|
| ||
| Pharmaceutical claims | Drug codes, dosages, prescription dates, manufacturer, … | |
|
| ||
| Ancillary claims | Medical equipment, physiotherapy, home health assistance, … | |
|
| ||
| Clinical/diagnostic processes of different provider organizations (e.g., health, social, aged or disability care) | Institutional data | Educational background, work experience, working times, … |
|
| ||
| EMR/EHR data | Vital signs, medical history, disease conditions, lab results, … | |
|
| ||
| Medical imaging | X-ray, magnetic resonance, computed tomography, ultrasonography, … | |
|
| ||
| Biomarker | “-omics”: genomics, proteomics, metabolomics, lipidomics, … | |
|
| ||
| Registries | Structured collection of disease/population specific measures | |
|
| ||
| Patient- or people-generated | Smart sensor/device data | Biometric data, physical activity, gait/sleep patterns, location, … |
|
| ||
| Web usage data | Social media posts, internet search logs, health forum activity, … | |
|
| ||
| Health-related research | Clinical trial data | Study size, clinically defined parameters and outcomes, … |
|
| ||
| Drug surveillance data | Adverse drug effects, population size, regional uptake/variation, … | |
|
| ||
| (Health) Survey data | Patient-reported outcome measures (PROMs), health literacy, … | |
|
| ||
| Health-related systems | Socio-economic/community-based data | Income, deprivation, education, living situation, marital status, … |
|
| ||
| Environmental/spatial data | Air/noise pollution, temperature, neighbourhood characteristics, … | |
|
| ||
Figure 1Role model of a people-centred health platform for big data analytics (EHR = electronic health record; PROMs = patient-reported outcome measures, with elements of [37]).
Figure 2Data types most often applied for big data analyses in healthcare (April 2019), illustrated as tree map.
Figure 3Distribution of the most often used big data analytical models in healthcare (April 2019), illustrated as tree map.
The strategic interventions of the people-centred and integrated health services framework that might incorporate big data analytics (results of the in this scoping review and a content analysis, see also Table 8).
|
| |||||
|---|---|---|---|---|---|
| STRATEGIC DIRECTION | POLICY OPTIONS AND STRATEGICAL INTERVENTIONS POTENTIALLY SUPPORTED BY BDA | NUMBER OF PUBLICATIONS IN THE REVIEW (N = 72) | |||
|
| |||||
|
|
|
| |||
|
| |||||
| Personalized care plans | 31 | 43% | |||
|
| |||||
| Self-management activities | 5 | 7% | |||
|
| |||||
| Shared decision making | 4 | 6% | |||
|
| |||||
| Health education | 3 | 4% | |||
|
| |||||
| Access to personal health records | 2 | 3% | |||
|
| |||||
| Peer support | 1 | 1% | |||
|
| |||||
| Patient satisfaction surveys | 1 | 1% | |||
|
| |||||
|
|
|
| |||
|
| |||||
| Performance evaluation | 15 | 21% | |||
|
| |||||
| Performance-based contracting | 8 | 11% | |||
|
| |||||
| Decentralization | 8 | 11% | |||
|
| |||||
| Patient-reported outcomes | 1 | 1% | |||
|
| |||||
|
|
|
| |||
|
| |||||
| Clinical decision support | 23 | 32% | |||
|
| |||||
| Tailoring population-based services | 19 | 27% | |||
|
| |||||
| Surveillance and control systems | 13 | 18% | |||
|
| |||||
| Mobile health technologies | 10 | 14% | |||
|
| |||||
| Health promotion and disease prevention | 9 | 13% | |||
|
| |||||
| Home and nursing care | 5 | 7% | |||
|
| |||||
|
|
|
| |||
|
| |||||
| Care pathways | 8 | 11% | |||
|
| |||||
| Sharing of medical records | 6 | 8% | |||
|
| |||||
| Intersectoral partnerships | 5 | 7% | |||
|
| |||||
| District-based healthcare delivery | 1 | 1% | |||
|
| |||||
|
|
|
| |||
|
| |||||
| Resource allocation | 11 | 15% | |||
|
| |||||
| System research | 6 | 8% | |||
|
| |||||
| Quality assurance | 3 | 4% | |||
|
| |||||
| Workforce training | 2 | 3% | |||
|
| |||||
Challenges in designing a people-centred and integrated health platform to enable big data analytics in healthcare.
|
| ||||
|---|---|---|---|---|
| CHALLENGE DOMAIN BIG DATA CHARACTERISTIC | REGULATORY | TECHNOLOGICAL | METHODOLOGICAL | CULTURAL |
|
| ||||
|
| Investment & technology framework | Data infrastructure | High-dimensional analytics | Teamwork culture |
|
| ||||
|
| Communication framework | Data processing | Real-time analytics | Delivery process redesign |
|
| ||||
|
| Intellectual property framework | Data linkage | Modelling standards & bias | Data sharing culture |
|
| ||||
|
| Evaluation framework | Data quality | Evidence- base | Data governance |
|
| ||||
|
| Privacy & ethics framework | Data access & data security | Interpretation & usability | Culture of learning & change |
|
| ||||
| • | high volume | (big amount of data, often referred to as exceeding tera- or petabytes), |
| • | high velocity | (fast speed of data generation like streaming data close to real-time), |
| • | high variety | (many diverse data formats and structures from multiple sources), |
| • | high veracity | (conformity with facts and closely related to data quality), |
| • | high value | (the information derived provides benefits to decision makers which in healthcare is closely related to the triple aim). |