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Allscripts ehr data extraction
Conventional tobacco-use treatment specialist referral versus point-of-care treatment models. The conventional model relies on successful referrals by the clinical care team to a tobacco-use treatment specialist. <t>Electronic</t> <t>health</t> <t>record</t> <t>(EHR)</t> functionality enables the point-of-care model to efficiently deliver treatment.
Ehr Data Extraction, supplied by Allscripts, used in various techniques. Bioz Stars score: 90/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
https://www.bioz.com/result/ehr data extraction/product/Allscripts
Average 90 stars, based on 1 article reviews
ehr data extraction - by Bioz Stars, 2026-04
90/100 stars

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1) Product Images from "Care-paradigm shift promoting smoking cessation treatment among cancer center patients via a low-burden strategy, Electronic Health Record-Enabled Evidence-Based Smoking Cessation Treatment"

Article Title: Care-paradigm shift promoting smoking cessation treatment among cancer center patients via a low-burden strategy, Electronic Health Record-Enabled Evidence-Based Smoking Cessation Treatment

Journal: Translational Behavioral Medicine

doi: 10.1093/tbm/ibz107

Conventional tobacco-use treatment specialist referral versus point-of-care treatment models. The conventional model relies on successful referrals by the clinical care team to a tobacco-use treatment specialist. Electronic health record (EHR) functionality enables the point-of-care model to efficiently deliver treatment.
Figure Legend Snippet: Conventional tobacco-use treatment specialist referral versus point-of-care treatment models. The conventional model relies on successful referrals by the clinical care team to a tobacco-use treatment specialist. Electronic health record (EHR) functionality enables the point-of-care model to efficiently deliver treatment.

Techniques Used:

ELEVATE patient care workflow: A point-of-care treatment model for smoking cessation via the “5 A’s.” ELEVATE facilitates “5 A’s” patient care by harnessing Epic’s Best Practice Advisory (BPA) functionality to prompt and integrate intervention actions by clinical care providers (e.g., nurses or medical assistants) and prescribing clinicians within the electronic health record (EHR).
Figure Legend Snippet: ELEVATE patient care workflow: A point-of-care treatment model for smoking cessation via the “5 A’s.” ELEVATE facilitates “5 A’s” patient care by harnessing Epic’s Best Practice Advisory (BPA) functionality to prompt and integrate intervention actions by clinical care providers (e.g., nurses or medical assistants) and prescribing clinicians within the electronic health record (EHR).

Techniques Used:

Measure definitions of tobacco intervention rates, pre- and post-ELEVATE
Figure Legend Snippet: Measure definitions of tobacco intervention rates, pre- and post-ELEVATE

Techniques Used: Medications

Pre- and post-ELEVATE comparisons of tobacco use assessment and treatment among Siteman Cancer Center outpatients. ELEVATE is associated with significantly increased tobacco use assessment and documented treatment
Figure Legend Snippet: Pre- and post-ELEVATE comparisons of tobacco use assessment and treatment among Siteman Cancer Center outpatients. ELEVATE is associated with significantly increased tobacco use assessment and documented treatment

Techniques Used:

“5 A’s” implementation with ELEVATE. The patient flow diagram demonstrates the electronic health record (EHR)-facilitated implementation of the “5 A’s” tobacco intervention through the outpatient oncology clinic workflow alongside rates of completion for each of the “5 A’s.”
Figure Legend Snippet: “5 A’s” implementation with ELEVATE. The patient flow diagram demonstrates the electronic health record (EHR)-facilitated implementation of the “5 A’s” tobacco intervention through the outpatient oncology clinic workflow alongside rates of completion for each of the “5 A’s.”

Techniques Used:



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Conventional tobacco-use treatment specialist referral versus point-of-care treatment models. The conventional model relies on successful referrals by the clinical care team to a tobacco-use treatment specialist. <t>Electronic</t> <t>health</t> <t>record</t> <t>(EHR)</t> functionality enables the point-of-care model to efficiently deliver treatment.
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Cegedim Strategic Data Medical Research Ltd data extracted from french primary care ehrs
Conventional tobacco-use treatment specialist referral versus point-of-care treatment models. The conventional model relies on successful referrals by the clinical care team to a tobacco-use treatment specialist. <t>Electronic</t> <t>health</t> <t>record</t> <t>(EHR)</t> functionality enables the point-of-care model to efficiently deliver treatment.
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Image Search Results


Dataset creation for the ambulatory electrocardiogram-convolutional neural network model development. Schematic indicates the strategy to obtain robust and reliable dataset for model development. To avoid cross-contamination, no patient data are repeated among training, validation, and testing datasets. *Patient count ( n = 5829) selected based on several inclusion, exclusion criteria to ensure the quality of LVEF data as they are obtained from Optum ® EHR and the dataset was captured in Optum ® EHR via natural language processing of procedure/diagnostic notes and prone to natural language processing errors.

Journal: European Heart Journal. Digital Health

Article Title: Dynamic risk stratification of worsening heart failure using a deep learning-enabled implanted ambulatory single-lead electrocardiogram

doi: 10.1093/ehjdh/ztae035

Figure Lengend Snippet: Dataset creation for the ambulatory electrocardiogram-convolutional neural network model development. Schematic indicates the strategy to obtain robust and reliable dataset for model development. To avoid cross-contamination, no patient data are repeated among training, validation, and testing datasets. *Patient count ( n = 5829) selected based on several inclusion, exclusion criteria to ensure the quality of LVEF data as they are obtained from Optum ® EHR and the dataset was captured in Optum ® EHR via natural language processing of procedure/diagnostic notes and prone to natural language processing errors.

Article Snippet: To ensure robust and reliable LVEF information and minimize errors introduced through automated data extraction from Optum ® EHR , we only included patients with prior HF diagnosis to create the low ejection fraction (EF) data (LVEF ≤ 40%).

Techniques: Biomarker Discovery, Diagnostic Assay

Conventional tobacco-use treatment specialist referral versus point-of-care treatment models. The conventional model relies on successful referrals by the clinical care team to a tobacco-use treatment specialist. Electronic health record (EHR) functionality enables the point-of-care model to efficiently deliver treatment.

Journal: Translational Behavioral Medicine

Article Title: Care-paradigm shift promoting smoking cessation treatment among cancer center patients via a low-burden strategy, Electronic Health Record-Enabled Evidence-Based Smoking Cessation Treatment

doi: 10.1093/tbm/ibz107

Figure Lengend Snippet: Conventional tobacco-use treatment specialist referral versus point-of-care treatment models. The conventional model relies on successful referrals by the clinical care team to a tobacco-use treatment specialist. Electronic health record (EHR) functionality enables the point-of-care model to efficiently deliver treatment.

Article Snippet: EHR data extraction Pre-ELEVATE EHR data were extracted from Allscripts TouchWorks for oncology patients completing outpatient encounters from January 1, 2018 to June 1, 2018.

Techniques:

ELEVATE patient care workflow: A point-of-care treatment model for smoking cessation via the “5 A’s.” ELEVATE facilitates “5 A’s” patient care by harnessing Epic’s Best Practice Advisory (BPA) functionality to prompt and integrate intervention actions by clinical care providers (e.g., nurses or medical assistants) and prescribing clinicians within the electronic health record (EHR).

Journal: Translational Behavioral Medicine

Article Title: Care-paradigm shift promoting smoking cessation treatment among cancer center patients via a low-burden strategy, Electronic Health Record-Enabled Evidence-Based Smoking Cessation Treatment

doi: 10.1093/tbm/ibz107

Figure Lengend Snippet: ELEVATE patient care workflow: A point-of-care treatment model for smoking cessation via the “5 A’s.” ELEVATE facilitates “5 A’s” patient care by harnessing Epic’s Best Practice Advisory (BPA) functionality to prompt and integrate intervention actions by clinical care providers (e.g., nurses or medical assistants) and prescribing clinicians within the electronic health record (EHR).

Article Snippet: EHR data extraction Pre-ELEVATE EHR data were extracted from Allscripts TouchWorks for oncology patients completing outpatient encounters from January 1, 2018 to June 1, 2018.

Techniques:

Measure definitions of tobacco intervention rates, pre- and post-ELEVATE

Journal: Translational Behavioral Medicine

Article Title: Care-paradigm shift promoting smoking cessation treatment among cancer center patients via a low-burden strategy, Electronic Health Record-Enabled Evidence-Based Smoking Cessation Treatment

doi: 10.1093/tbm/ibz107

Figure Lengend Snippet: Measure definitions of tobacco intervention rates, pre- and post-ELEVATE

Article Snippet: EHR data extraction Pre-ELEVATE EHR data were extracted from Allscripts TouchWorks for oncology patients completing outpatient encounters from January 1, 2018 to June 1, 2018.

Techniques: Medications

Pre- and post-ELEVATE comparisons of tobacco use assessment and treatment among Siteman Cancer Center outpatients. ELEVATE is associated with significantly increased tobacco use assessment and documented treatment

Journal: Translational Behavioral Medicine

Article Title: Care-paradigm shift promoting smoking cessation treatment among cancer center patients via a low-burden strategy, Electronic Health Record-Enabled Evidence-Based Smoking Cessation Treatment

doi: 10.1093/tbm/ibz107

Figure Lengend Snippet: Pre- and post-ELEVATE comparisons of tobacco use assessment and treatment among Siteman Cancer Center outpatients. ELEVATE is associated with significantly increased tobacco use assessment and documented treatment

Article Snippet: EHR data extraction Pre-ELEVATE EHR data were extracted from Allscripts TouchWorks for oncology patients completing outpatient encounters from January 1, 2018 to June 1, 2018.

Techniques:

“5 A’s” implementation with ELEVATE. The patient flow diagram demonstrates the electronic health record (EHR)-facilitated implementation of the “5 A’s” tobacco intervention through the outpatient oncology clinic workflow alongside rates of completion for each of the “5 A’s.”

Journal: Translational Behavioral Medicine

Article Title: Care-paradigm shift promoting smoking cessation treatment among cancer center patients via a low-burden strategy, Electronic Health Record-Enabled Evidence-Based Smoking Cessation Treatment

doi: 10.1093/tbm/ibz107

Figure Lengend Snippet: “5 A’s” implementation with ELEVATE. The patient flow diagram demonstrates the electronic health record (EHR)-facilitated implementation of the “5 A’s” tobacco intervention through the outpatient oncology clinic workflow alongside rates of completion for each of the “5 A’s.”

Article Snippet: EHR data extraction Pre-ELEVATE EHR data were extracted from Allscripts TouchWorks for oncology patients completing outpatient encounters from January 1, 2018 to June 1, 2018.

Techniques: