Baselight

Electronic Health Legal Data

Exploring Laws and Regulations

@kaggle.thedevastator_electronic_health_legal_data

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About this Dataset

Electronic Health Legal Data


Electronic Health Legal Data

Exploring Laws and Regulations

By US Open Data Portal, data.gov [source]


About this dataset

This Electronic Health Information Legal Epidemiology dataset offers an extensive collection of legal and epidemiological data that can be used to understand the complexities of electronic health information. It contains a detailed balance of variables, including legal requirements, enforcement mechanisms, proprietary tools, access restrictions, privacy and security implications, data rights and responsibilities, user accounts and authentication systems. This powerful set provides researchers with real-world insights into the functioning of EHI law in order to assess its impact on patient safety and public health outcomes. With such data it is possible to gain a better understanding of current policies regarding the regulation of electronic health information as well as their potential for improvement in safeguarding patient confidentiality. Use this dataset to explore how these laws impact our healthcare system by exploring patterns across different groups over time or analyze changes leading up to new versions or updates. Make exciting discoveries with this comprehensive dataset!

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How to use the dataset

  • Start by familiarizing yourself with the different columns of the dataset. Examine each column closely and look up any unfamiliar terminology to get a better understanding of what the columns are referencing.

  • Once you understand the data and what it is intended to represent, think about how you might want to use it in your analysis. You may want to create a research question, or narrower focus for your project surrounding legal epidemiology of electronic health information that can be answered with this data set.

  • After creating your research plan, begin manipulating and cleaning up the data as needed in order to prepare it for analysis or visualization as specified in your project plan or research question/model design steps you have outlined .

4 .Next, perform exploratory data analysis (EDA) on relevant subsets of data from specific countries if needed on specific subsets based on targets of interests (e.g gender). Filter out irrelevant information necessary for drawing meaningful insights; analyze patterns and trends observed in your filtered datasets ; compare areas which have differing rates e-health related rules and regulations tying decisions made by elected officials strongly driven by demographics , socioeconomics factors ,ideology etc.. . Look out for correlations using statistical information as needed throughout all stages in process from filtering out dis-informative subgroups from full population set til generating visualizations(graphs/ diagrams) depicting valid insight leveraging descriptive / predictive models properly validate against reference datasets when available always keep openness principal during gathering info especially when needs requires contact external sources such validating multiple sources work best provide strong seals establishing validity accuracy facts statement representing humans case scenarios digital support suitably localized supporting local languages culture respectively while keeping secure datasets private visible limited particular users duly authorized access 5 Finally create concrete summaries reporting discoveries create share findings preferably infographics showcasing evidence observances providing overall assessment main conclusions protocols developed so far broader community indirectly related interested professionals able benefit those results ideas complete transparently freely adapted locally ported increase overall global society level enhancing potentiality range impact derive conditions allowing wider adoption increased usage diffusion capture wide spread change movement affect global e-health legal domain clear manner

Research Ideas

  • Studying how technology affects public health policies and practice - Using the data, researchers can look at the various types of legal regulations related to electronic health information to examine any relations between technology and public health decisions in certain areas or regions.
  • Evaluating trends in legal epidemiology – With this data, policymakers can identify patterns that help measure the evolution of electronic health information regulations over time and investigate why such rules are changing within different states or countries.
  • Analysing possible impacts on healthcare costs – Looking at changes in laws, regulations, and standards related to electronic health information could provide insights into potential cost implications for patients when these factors change due to technological advances or other factors

Acknowledgements

If you use this dataset in your research, please credit the original authors.
Data Source

License

License: Open Database License (ODbL) v1.0

  • You are free to:
    • Share - copy and redistribute the material in any medium or format.
    • Adapt - remix, transform, and build upon the material for any purpose, even commercially.
  • You must:
    • Give appropriate credit - Provide a link to the license, and indicate if changes were made.
    • ShareAlike - You must distribute your contributions under the same license as the original.
    • Keep intact - all notices that refer to this license, including copyright notices.
    • No Derivatives - If you remix, transform, or build upon the material, you may not distribute the modified material.
    • No additional restrictions - You may not apply legal terms or technological measures that legally restrict others from doing anything the license permits.

Columns

Acknowledgements

If you use this dataset in your research, please credit the original authors.
If you use this dataset in your research, please credit US Open Data Portal, data.gov.

Tables

Comma Separated Values File 1

@kaggle.thedevastator_electronic_health_legal_data.comma_separated_values_file_1
  • 320.97 KB
  • 2365 rows
  • 109 columns
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CREATE TABLE comma_separated_values_file_1 (
  "index" BIGINT,
  "id" DOUBLE,
  "title" VARCHAR,
  "citation" VARCHAR,
  "content" VARCHAR,
  "sectiondetail1" VARCHAR,
  "sectiondetail2" VARCHAR,
  "sectiondetail3" VARCHAR,
  "sectiondetail4" VARCHAR,
  "codingsummary" VARCHAR,
  "disease_investigation" BIGINT,
  "dixref" BIGINT,
  "disease_reporting" BIGINT,
  "drepxref" BIGINT,
  "syndromic_surveillance" BIGINT,
  "ssxref" BIGINT,
  "lab_reporting" BIGINT,
  "lrxref" BIGINT,
  "cancer_registry" BIGINT,
  "crxref" BIGINT,
  "immunization_registry" BIGINT,
  "irxref" BIGINT,
  "vital_statistics" BIGINT,
  "vsxref" BIGINT,
  "birth_defects" BIGINT,
  "bdxref" BIGINT,
  "newborn_blood_screening" BIGINT,
  "nbbsxref" BIGINT,
  "methprecursortracking" BIGINT,
  "methtrackingxref" BIGINT,
  "anatomical_gift" BIGINT,
  "agxref" BIGINT,
  "mental_and_behavioral_health_reporting" BIGINT,
  "mhrxref" BIGINT,
  "accountable_care_organizations" BIGINT,
  "acoxref" BIGINT,
  "hie_hio" BIGINT,
  "hiexref" BIGINT,
  "ehr_treatment" BIGINT,
  "ehrxref" BIGINT,
  "ehr_education" BIGINT,
  "edxref" BIGINT,
  "ehr_corrections" BIGINT,
  "cxref" BIGINT,
  "workers_compensation" BIGINT,
  "wcxref" BIGINT,
  "payor" BIGINT,
  "pxref" BIGINT,
  "prescription_drug_monitoring_program" BIGINT,
  "pdmpxref" BIGINT,
  "controlledsubstances" BIGINT,
  "csxref" BIGINT,
  "healthcarequality" BIGINT,
  "hcqxref" BIGINT,
  "advancedirectiveinformationsystems" BIGINT,
  "adisxref" BIGINT,
  "traumainformationsystems" BIGINT,
  "tisxref" BIGINT,
  "childbloodlead" BIGINT,
  "cblxref" BIGINT,
  "newbornhearingscreening" BIGINT,
  "nbhsxref" BIGINT,
  "medicalmarijuana" BIGINT,
  "mmxr" BIGINT,
  "emsreporting" BIGINT,
  "emsxref" BIGINT,
  "childsupportwelfarefoster" BIGINT,
  "csupportxref" BIGINT,
  "hazardoussubstanceregistry" BIGINT,
  "hazsubxref" BIGINT,
  "driverslicense" BIGINT,
  "dlxref" BIGINT,
  "researchpublicuse" BIGINT,
  "pubusexref" BIGINT,
  "hitoversight" BIGINT,
  "hitoxref" BIGINT,
  "governmentrecords" BIGINT,
  "govrecxref" BIGINT,
  "occupationalhealth" BIGINT,
  "ohxref" BIGINT,
  "publicassistance" BIGINT,
  "pubassistxref" BIGINT,
  "dentalidentification" BIGINT,
  "dentalxref" BIGINT,
  "vulnerablepopulations" BIGINT,
  "vulnerablepopxref" BIGINT,
  "breathtestingrec" BIGINT,
  "breathtestxref" BIGINT,
  "voterregistration" BIGINT,
  "voterregxref" BIGINT,
  "propertytax" BIGINT,
  "propertytaxxref" BIGINT,
  "familyplanning" BIGINT,
  "famplanxref" BIGINT,
  "healthcareservicereport" BIGINT,
  "hcsreportxref" BIGINT,
  "infectiousdisepisystem" BIGINT,
  "idepisystemxref" BIGINT,
  "admininvestigations" BIGINT,
  "admininvestxref" BIGINT
);

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