FHIR © HL7.org  |  Server Home  |  FHIR Server FHIR Server 3.4.11  |  FHIR Version n/a  User: [n/a]

Resource Requirements/FHIR Server from package hl7.ehrs.ehrsfmr21#current (31 ms)

Package hl7.ehrs.ehrsfmr21
Type Requirements
Id Id
FHIR Version R5
Source http://hl7.org/ehrs/https://build.fhir.org/ig/mvdzel/ehrsfm-fhir-r5/Requirements-EHRSFMR2.1-POP.2.2.html
Url http://hl7.org/ehrs/Requirements/EHRSFMR2.1-POP.2.2
Version 2.1.0
Status active
Date 2024-11-26T16:30:50+00:00
Name POP_2_2_Support_for_Epidemiologic_Data_Analysis
Title POP.2.2 Support for Epidemiologic Data-Analysis (Function)
Experimental False
Realm uv
Authority hl7
Description Support for Cohort Person-Level and Aggregate-Level Data Content and Analysis
Purpose The EHR system assists care providers, public health experts and others in assessing patient and population health conditions. Healthcare can be improved if analyses are performed on a population basis to evaluate care delivery, health status and disease trends, and identify potential modifiable risk factors. The various ways of analyzing a population (cohort) can be complex. Some population-based research examines relationships between events or exposures and their corresponding outcomes. Other population-based research may focus on healthcare utilization, service availability and quality of care. Population-level surveillance, monitoring of disease, and epidemiologic research involves analysis of data based on existing relationships between pre-defined and well-known data elements. These analyses utilize various data elements including demographics, education, marital status, social factors, family history of diseases, personal history (e.g., alcohol and tobacco use, reading capability, hearing impairment), environmental factors (such as proximity to toxic exposures), occupational factors (such as type of occupation and industry, shift-work, training, hobby), genomic and proteomic data elements, resource utilization, problem lists, and other clinical information. The identification of new and previously unrecognized patterns of disease may require sophisticated pattern recognition analysis. Early recognition of new patterns may require data available early in the disease presentation. For example, an investigation of pneumococcal disease may involve a trend analysis of the causative serotype (laboratory data) over time, evaluated per age group of patients diagnosed with pneumonia (aggregates). Several aggregates may be identified (e.g., multiple age groups). Each aggregate then is analyzed as a group for selected data pattern(s) using data elements that include, but are not limited to, patient demographics, presenting symptoms, acute treatment regimens, occupational information, and laboratory and imaging study orders and results.

Resources that use this resource

No resources found


Resources that this resource uses

No resources found



Narrative

Note: links and images are rebased to the (stated) source

Statement N:

Support for Cohort Person-Level and Aggregate-Level Data Content and Analysis

Description I:

The EHR system assists care providers, public health experts and others in assessing patient and population health conditions. Healthcare can be improved if analyses are performed on a population basis to evaluate care delivery, health status and disease trends, and identify potential modifiable risk factors. The various ways of analyzing a population (cohort) can be complex. Some population-based research examines relationships between events or exposures and their corresponding outcomes. Other population-based research may focus on healthcare utilization, service availability and quality of care. Population-level surveillance, monitoring of disease, and epidemiologic research involves analysis of data based on existing relationships between pre-defined and well-known data elements. These analyses utilize various data elements including demographics, education, marital status, social factors, family history of diseases, personal history (e.g., alcohol and tobacco use, reading capability, hearing impairment), environmental factors (such as proximity to toxic exposures), occupational factors (such as type of occupation and industry, shift-work, training, hobby), genomic and proteomic data elements, resource utilization, problem lists, and other clinical information. The identification of new and previously unrecognized patterns of disease may require sophisticated pattern recognition analysis. Early recognition of new patterns may require data available early in the disease presentation. For example, an investigation of pneumococcal disease may involve a trend analysis of the causative serotype (laboratory data) over time, evaluated per age group of patients diagnosed with pneumonia (aggregates). Several aggregates may be identified (e.g., multiple age groups). Each aggregate then is analyzed as a group for selected data pattern(s) using data elements that include, but are not limited to, patient demographics, presenting symptoms, acute treatment regimens, occupational information, and laboratory and imaging study orders and results.

Criteria N:
POP.2.2#01 dependent SHALL

The system SHALL provide the ability to manage query results (i.e., cohorts, and/or aggregates) according to scope of practice, organizational policy, and/or jurisdictional law.

POP.2.2#02 SHOULD

The system SHOULD provide the ability to analyze various combinations of aggregates within a cohort (e.g., to determine the adequacy of patient confidentiality in the result).

POP.2.2#03 dependent SHALL

The system SHALL provide the ability to manage person-level information in a cohort or aggregate using user-identified, and/or pre-defined criteria (e.g., demographic or clinical information) according to scope of practice, organizational policy, and/or jurisdictional law

POP.2.2#04 SHOULD

The system SHOULD provide the ability to determine, tag and render changes in dynamic cohorts.

POP.2.2#05 SHOULD

The system SHOULD conform to function [[TI.5.3]] (Standards-Based Application Integration) to manage query results.

POP.2.2#06 SHOULD

The system SHOULD provide the ability to analyze and render statistical information that has been derived from query results, including, but not limited to, person-level data and aggregates.


Source

{
  "resourceType" : "Requirements",
  "id" : "EHRSFMR2.1-POP.2.2",
  "meta" : {
    "profile" : [
      "http://hl7.org/ehrs/StructureDefinition/FMFunction"
    ]
  },
  "text" : {
    "status" : "extensions",
    "div" : "<div xmlns=\"http://www.w3.org/1999/xhtml\">\n <span id=\"description\"><b>Statement <a href=\"https://hl7.org/fhir/versions.html#std-process\" title=\"Normative Content\" class=\"normative-flag\">N</a>:</b> <div><p>Support for Cohort Person-Level and Aggregate-Level Data Content and Analysis</p>\n</div></span>\n\n \n <span id=\"purpose\"><b>Description <a href=\"https://hl7.org/fhir/versions.html#std-process\" title=\"Informative Content\" class=\"informative-flag\">I</a>:</b> <div><p>The EHR system assists care providers, public health experts and others in assessing patient and population health conditions. Healthcare can be improved if analyses are performed on a population basis to evaluate care delivery, health status and disease trends, and identify potential modifiable risk factors. The various ways of analyzing a population (cohort) can be complex. Some population-based research examines relationships between events or exposures and their corresponding outcomes. Other population-based research may focus on healthcare utilization, service availability and quality of care. Population-level surveillance, monitoring of disease, and epidemiologic research involves analysis of data based on existing relationships between pre-defined and well-known data elements. These analyses utilize various data elements including demographics, education, marital status, social factors, family history of diseases, personal history (e.g., alcohol and tobacco use, reading capability, hearing impairment), environmental factors (such as proximity to toxic exposures), occupational factors (such as type of occupation and industry, shift-work, training, hobby), genomic and proteomic data elements, resource utilization, problem lists, and other clinical information. The identification of new and previously unrecognized patterns of disease may require sophisticated pattern recognition analysis. Early recognition of new patterns may require data available early in the disease presentation. For example, an investigation of pneumococcal disease may involve a trend analysis of the causative serotype (laboratory data) over time, evaluated per age group of patients diagnosed with pneumonia (aggregates). Several aggregates may be identified (e.g., multiple age groups). Each aggregate then is analyzed as a group for selected data pattern(s) using data elements that include, but are not limited to, patient demographics, presenting symptoms, acute treatment regimens, occupational information, and laboratory and imaging study orders and results.</p>\n</div></span>\n \n\n \n\n \n <span id=\"requirements\"><b>Criteria <a href=\"https://hl7.org/fhir/versions.html#std-process\" title=\"Normative Content\" class=\"normative-flag\">N</a>:</b></span>\n \n <table id=\"statements\" class=\"grid dict\">\n \n <tr>\n <td style=\"padding-left: 4px;\">\n \n <span>POP.2.2#01</span>\n \n </td>\n <td style=\"padding-left: 4px;\">\n \n <i>dependent</i>\n \n \n \n <span>SHALL</span>\n \n </td>\n <td style=\"padding-left: 4px;\" class=\"requirement\">\n \n <span><div><p>The system SHALL provide the ability to manage query results (i.e., cohorts, and/or aggregates) according to scope of practice, organizational policy, and/or jurisdictional law.</p>\n</div></span>\n \n \n </td>\n </tr>\n \n <tr>\n <td style=\"padding-left: 4px;\">\n \n <span>POP.2.2#02</span>\n \n </td>\n <td style=\"padding-left: 4px;\">\n \n \n \n <span>SHOULD</span>\n \n </td>\n <td style=\"padding-left: 4px;\" class=\"requirement\">\n \n <span><div><p>The system SHOULD provide the ability to analyze various combinations of aggregates within a cohort (e.g., to determine the adequacy of patient confidentiality in the result).</p>\n</div></span>\n \n \n </td>\n </tr>\n \n <tr>\n <td style=\"padding-left: 4px;\">\n \n <span>POP.2.2#03</span>\n \n </td>\n <td style=\"padding-left: 4px;\">\n \n <i>dependent</i>\n \n \n \n <span>SHALL</span>\n \n </td>\n <td style=\"padding-left: 4px;\" class=\"requirement\">\n \n <span><div><p>The system SHALL provide the ability to manage person-level information in a cohort or aggregate using user-identified, and/or pre-defined criteria (e.g., demographic or clinical information) according to scope of practice, organizational policy, and/or jurisdictional law</p>\n</div></span>\n \n \n </td>\n </tr>\n \n <tr>\n <td style=\"padding-left: 4px;\">\n \n <span>POP.2.2#04</span>\n \n </td>\n <td style=\"padding-left: 4px;\">\n \n \n \n <span>SHOULD</span>\n \n </td>\n <td style=\"padding-left: 4px;\" class=\"requirement\">\n \n <span><div><p>The system SHOULD provide the ability to determine, tag and render changes in dynamic cohorts.</p>\n</div></span>\n \n \n </td>\n </tr>\n \n <tr>\n <td style=\"padding-left: 4px;\">\n \n <span>POP.2.2#05</span>\n \n </td>\n <td style=\"padding-left: 4px;\">\n \n \n \n <span>SHOULD</span>\n \n </td>\n <td style=\"padding-left: 4px;\" class=\"requirement\">\n \n <span><div><p>The system SHOULD conform to function [[TI.5.3]] (Standards-Based Application Integration) to manage query results.</p>\n</div></span>\n \n \n </td>\n </tr>\n \n <tr>\n <td style=\"padding-left: 4px;\">\n \n <span>POP.2.2#06</span>\n \n </td>\n <td style=\"padding-left: 4px;\">\n \n \n \n <span>SHOULD</span>\n \n </td>\n <td style=\"padding-left: 4px;\" class=\"requirement\">\n \n <span><div><p>The system SHOULD provide the ability to analyze and render statistical information that has been derived from query results, including, but not limited to, person-level data and aggregates.</p>\n</div></span>\n \n \n </td>\n </tr>\n \n </table>\n</div>"
  },
  "url" : "http://hl7.org/ehrs/Requirements/EHRSFMR2.1-POP.2.2",
  "version" : "2.1.0",
  "name" : "POP_2_2_Support_for_Epidemiologic_Data_Analysis",
  "title" : "POP.2.2 Support for Epidemiologic Data-Analysis (Function)",
  "status" : "active",
  "date" : "2024-11-26T16:30:50+00:00",
  "publisher" : "EHR WG",
  "contact" : [
    {
      "telecom" : [
        {
          "system" : "url",
          "value" : "http://www.hl7.org/Special/committees/ehr"
        }
      ]
    }
  ],
  "description" : "Support for Cohort Person-Level and Aggregate-Level Data Content and Analysis",
  "jurisdiction" : [
    {
      "coding" : [
        {
          "system" : "http://unstats.un.org/unsd/methods/m49/m49.htm",
          "code" : "001",
          "display" : "World"
        }
      ]
    }
  ],
  "purpose" : "The EHR system assists care providers, public health experts and others in assessing patient and population health conditions. Healthcare can be improved if analyses are performed on a population basis to evaluate care delivery, health status and disease trends, and identify potential modifiable risk factors. The various ways of analyzing a population (cohort) can be complex. Some population-based research examines relationships between events or exposures and their corresponding outcomes. Other population-based research may focus on healthcare utilization, service availability and quality of care. Population-level surveillance, monitoring of disease, and epidemiologic research involves analysis of data based on existing relationships between pre-defined and well-known data elements. These analyses utilize various data elements including demographics, education, marital status, social factors, family history of diseases, personal history (e.g., alcohol and tobacco use, reading capability, hearing impairment), environmental factors (such as proximity to toxic exposures), occupational factors (such as type of occupation and industry, shift-work, training, hobby), genomic and proteomic data elements, resource utilization, problem lists, and other clinical information. The identification of new and previously unrecognized patterns of disease may require sophisticated pattern recognition analysis. Early recognition of new patterns may require data available early in the disease presentation. For example, an investigation of pneumococcal disease may involve a trend analysis of the causative serotype (laboratory data) over time, evaluated per age group of patients diagnosed with pneumonia (aggregates). Several aggregates may be identified (e.g., multiple age groups). Each aggregate then is analyzed as a group for selected data pattern(s) using data elements that include, but are not limited to, patient demographics, presenting symptoms, acute treatment regimens, occupational information, and laboratory and imaging study orders and results.",
  "statement" : [
    {
      "extension" : [
        {
          "url" : "http://hl7.org/ehrs/StructureDefinition/requirements-dependent",
          "valueBoolean" : true
        }
      ],
      "key" : "EHRSFMR2.1-POP.2.2-01",
      "label" : "POP.2.2#01",
      "conformance" : [
        "SHALL"
      ],
      "conditionality" : false,
      "requirement" : "The system SHALL provide the ability to manage query results (i.e., cohorts, and/or aggregates) according to scope of practice, organizational policy, and/or jurisdictional law."
    },
    {
      "extension" : [
        {
          "url" : "http://hl7.org/ehrs/StructureDefinition/requirements-dependent",
          "valueBoolean" : false
        }
      ],
      "key" : "EHRSFMR2.1-POP.2.2-02",
      "label" : "POP.2.2#02",
      "conformance" : [
        "SHOULD"
      ],
      "conditionality" : false,
      "requirement" : "The system SHOULD provide the ability to analyze various combinations of aggregates within a cohort (e.g., to determine the adequacy of patient confidentiality in the result)."
    },
    {
      "extension" : [
        {
          "url" : "http://hl7.org/ehrs/StructureDefinition/requirements-dependent",
          "valueBoolean" : true
        }
      ],
      "key" : "EHRSFMR2.1-POP.2.2-03",
      "label" : "POP.2.2#03",
      "conformance" : [
        "SHALL"
      ],
      "conditionality" : false,
      "requirement" : "The system SHALL provide the ability to manage person-level information in a cohort or aggregate using user-identified, and/or pre-defined criteria (e.g., demographic or clinical information) according to scope of practice, organizational policy, and/or jurisdictional law"
    },
    {
      "extension" : [
        {
          "url" : "http://hl7.org/ehrs/StructureDefinition/requirements-dependent",
          "valueBoolean" : false
        }
      ],
      "key" : "EHRSFMR2.1-POP.2.2-04",
      "label" : "POP.2.2#04",
      "conformance" : [
        "SHOULD"
      ],
      "conditionality" : false,
      "requirement" : "The system SHOULD provide the ability to determine, tag and render changes in dynamic cohorts."
    },
    {
      "extension" : [
        {
          "url" : "http://hl7.org/ehrs/StructureDefinition/requirements-dependent",
          "valueBoolean" : false
        }
      ],
      "key" : "EHRSFMR2.1-POP.2.2-05",
      "label" : "POP.2.2#05",
      "conformance" : [
        "SHOULD"
      ],
      "conditionality" : false,
      "requirement" : "The system SHOULD conform to function [[TI.5.3]] (Standards-Based Application Integration) to manage query results."
    },
    {
      "extension" : [
        {
          "url" : "http://hl7.org/ehrs/StructureDefinition/requirements-dependent",
          "valueBoolean" : false
        }
      ],
      "key" : "EHRSFMR2.1-POP.2.2-06",
      "label" : "POP.2.2#06",
      "conformance" : [
        "SHOULD"
      ],
      "conditionality" : false,
      "requirement" : "The system SHOULD provide the ability to analyze and render statistical information that has been derived from query results, including, but not limited to, person-level data and aggregates."
    }
  ]
}

XIG built as of ??metadata-date??. Found ??metadata-resources?? resources in ??metadata-packages?? packages.