3 datasets found
  1. f

    Will Artificial Intelligence Nurse Practitioners Become True? Performance...

    • intechopen.figshare.com
    xlsx
    Updated Apr 11, 2025
    + more versions
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    Lang Peng; Yi Wu; Jiayi Sun; Yihong Xing; Mingqin Li; Mingzi Li (2025). Will Artificial Intelligence Nurse Practitioners Become True? Performance Evaluation of ChatGPT in the American Association of Nurse Practitioners Exam - Supporting Data [Dataset]. http://doi.org/10.5772/acrt.deposit.28444424.v1
    Explore at:
    xlsxAvailable download formats
    Dataset updated
    Apr 11, 2025
    Dataset provided by
    IntechOpen
    Authors
    Lang Peng; Yi Wu; Jiayi Sun; Yihong Xing; Mingqin Li; Mingzi Li
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    Nurse Practitioners play a vital role in contributing to the UN's Sustainable Development Goals, and Universal Health Coverage, especially the management of chronic noncommunicable diseases. Artificial intelligence tools such as ChatGPT are becoming promising resources for healthcare professionals. This study aimed to explore the capability of ChatGPT as a Nurse Practitioner by validating the performance of ChatGPT-3.5 and GPT-4 in the American Association of Nurse Practitioners (AANP) practice examinations. Questions from exams for five Nurse Practitioner disciplines were used to evaluate the accuracy and consistency of the responses in two phases. In the first phase, the accuracy rates and concordance of answers between the two versions with the five exam sets, totaling 535 questions were analyzed. In the second phase, the consistency of ChatGPT-4 performance in six retests, each involving five random questions from each set. ChatGPT-3.5 achieved an overall accuracy rate of 80.6%, while ChatGPT-4 achieved 90.7%. ChatGPT-3.5 and ChatGPT-4 showed strong consistency within all sets, while ChatGPT-4 performed better than ChatGPT-3.5. In the retests, ChatGPT-4 provided exactly the same answers as generated initially, including the incorrect ones. In conclusion, ChatGPT demonstrated excellent performance in AANP practice exams, with high levels of accuracy and consistency. This suggests that ChatGPT may support nurse practitioners in making clinical decisions and improving efficiency. Further studies could explore ways to integrate artificial intelligence tools with nurse practitioner practice to enhance the advanced practice nursing workforce.

  2. Healthcare Industry Leads Data | US Healthcare Professionals | Verified...

    • datarade.ai
    Updated Oct 27, 2021
    + more versions
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    Success.ai (2021). Healthcare Industry Leads Data | US Healthcare Professionals | Verified Contact Data for Executives, Admins, DRs & More | Best Price Guaranteed [Dataset]. https://datarade.ai/data-products/healthcare-industry-leads-data-us-healthcare-professionals-success-ai
    Explore at:
    .bin, .json, .xml, .csv, .xls, .sql, .txtAvailable download formats
    Dataset updated
    Oct 27, 2021
    Dataset provided by
    Area covered
    United States
    Description

    Success.ai’s Healthcare Industry Leads Data and B2B Contact Data for US Healthcare Professionals offers an extensive and verified database tailored to connect businesses with key executives and administrators in the healthcare industry across the United States. With over 170M verified profiles, including work emails and direct phone numbers, this dataset enables precise targeting of decision-makers in hospitals, clinics, and healthcare organizations.

    Backed by AI-driven validation technology for unmatched accuracy and reliability, this contact data empowers your marketing, sales, and recruitment strategies. Designed for industry professionals, our continuously updated profiles provide the actionable insights you need to grow your business in the competitive healthcare sector.

    Key Features of Success.ai’s US Healthcare Contact Data:

    • Comprehensive Healthcare Sector Coverage Access detailed contact information for professionals across the healthcare spectrum:

    Hospital Executives: CEOs, CFOs, and COOs managing top-tier facilities. Healthcare Administrators: Decision-makers driving operational excellence. Medical Professionals: Physicians, specialists, and nurse practitioners. Clinic Managers: Leaders in small and mid-sized healthcare organizations.

    • AI-Validated Accuracy and Updates

      99% Verified Accuracy: Our advanced AI technology ensures data reliability for optimal engagement. Real-Time Updates: Profiles are continuously refreshed to maintain relevance and accuracy. Minimized Bounce Rates: Save time and resources by reaching verified contacts.

    • Customizable Delivery Options Choose how you access the data to match your business requirements:

    API Integration: Connect our data directly to your CRM or sales platform. Flat File Delivery: Receive customized datasets in formats suited to your needs.

    Why Choose Success.ai for Healthcare Data?

    • Best Price Guarantee We ensure competitive pricing for our verified contact data, offering the most comprehensive and cost-effective solution in the market.

    • Compliance-Driven and Ethical Data Our data collection adheres to strict global standards, including HIPAA, GDPR, and CCPA compliance, ensuring secure and ethical usage.

    • Strategic Benefits for Your Business Success.ai’s US healthcare professional data unlocks numerous business opportunities:

    Targeted Marketing: Develop tailored campaigns aimed at healthcare executives and decision-makers. Efficient Sales Outreach: Engage with key contacts to accelerate your sales process. Recruitment Optimization: Access verified profiles to identify and recruit top talent in the healthcare industry. Market Intelligence: Use detailed firmographic and demographic insights to guide strategic decisions. Partnership Development: Build valuable relationships within the healthcare ecosystem.

    • Data Highlights 170M+ Verified Profiles 50M Direct Phone Numbers 700M Global Professional Profiles 70M Verified Company Profiles

    Key APIs for Advanced Functionality

    • Enrichment API Enhance your existing contact data with real-time updates, ensuring accuracy and relevance for your outreach initiatives.

    • Lead Generation API Drive high-quality lead generation efforts by utilizing verified contact information, including work emails and direct phone numbers, for up to 860,000 API calls per day.

    • Use Cases

    1. Healthcare Marketing Campaigns Target verified executives and administrators to deliver personalized and impactful marketing campaigns.

    2. Sales Enablement Connect with key decision-makers in healthcare organizations, ensuring higher conversion rates and shorter sales cycles.

    3. Talent Acquisition Source and engage healthcare professionals and administrators with accurate, up-to-date contact information.

    4. Strategic Partnerships Foster collaborations with healthcare institutions and professionals to expand your business network.

    5. Industry Analysis Leverage enriched contact data to gain insights into the US healthcare market, helping you refine your strategies.

    • What Sets Success.ai Apart?

    Verified Accuracy: AI-driven technology ensures 99% reliability for all contact details. Comprehensive Reach: Covering healthcare professionals from large hospital systems to smaller clinics nationwide. Flexible Access: Customizable data delivery methods tailored to your business needs. Ethical Standards: Fully compliant with healthcare and data protection regulations.

    Success.ai’s B2B Contact Data for US Healthcare Professionals is the ultimate solution for connecting with industry leaders, driving impactful marketing campaigns, and optimizing your recruitment strategies. Our commitment to quality, accuracy, and affordability ensures you achieve exceptional results while adhering to ethical and legal standards.

    No one beats us on price. Period.

  3. Data from: Lost on the frontline, and lost in the data: COVID-19 deaths...

    • figshare.com
    zip
    Updated Jul 22, 2022
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    Loraine Escobedo (2022). Lost on the frontline, and lost in the data: COVID-19 deaths among Filipinx healthcare workers in the United States [Dataset]. http://doi.org/10.6084/m9.figshare.20353368.v1
    Explore at:
    zipAvailable download formats
    Dataset updated
    Jul 22, 2022
    Dataset provided by
    Figsharehttp://figshare.com/
    Authors
    Loraine Escobedo
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    United States
    Description

    To estimate county of residence of Filipinx healthcare workers who died of COVID-19, we retrieved data from the Kanlungan website during the month of December 2020.22 In deciding who to include on the website, the AF3IRM team that established the Kanlungan website set two standards in data collection. First, the team found at least one source explicitly stating that the fallen healthcare worker was of Philippine ancestry; this was mostly media articles or obituaries sharing the life stories of the deceased. In a few cases, the confirmation came directly from the deceased healthcare worker's family member who submitted a tribute. Second, the team required a minimum of two sources to identify and announce fallen healthcare workers. We retrieved 86 US tributes from Kanlungan, but only 81 of them had information on county of residence. In total, 45 US counties with at least one reported tribute to a Filipinx healthcare worker who died of COVID-19 were identified for analysis and will hereafter be referred to as “Kanlungan counties.” Mortality data by county, race, and ethnicity came from the National Center for Health Statistics (NCHS).24 Updated weekly, this dataset is based on vital statistics data for use in conducting public health surveillance in near real time to provide provisional mortality estimates based on data received and processed by a specified cutoff date, before data are finalized and publicly released.25 We used the data released on December 30, 2020, which included provisional COVID-19 death counts from February 1, 2020 to December 26, 2020—during the height of the pandemic and prior to COVID-19 vaccines being available—for counties with at least 100 total COVID-19 deaths. During this time period, 501 counties (15.9% of the total 3,142 counties in all 50 states and Washington DC)26 met this criterion. Data on COVID-19 deaths were available for six major racial/ethnic groups: Non-Hispanic White, Non-Hispanic Black, Non-Hispanic Native Hawaiian or Other Pacific Islander, Non-Hispanic American Indian or Alaska Native, Non-Hispanic Asian (hereafter referred to as Asian American), and Hispanic. People with more than one race, and those with unknown race were included in the “Other” category. NCHS suppressed county-level data by race and ethnicity if death counts are less than 10. In total, 133 US counties reported COVID-19 mortality data for Asian Americans. These data were used to calculate the percentage of all COVID-19 decedents in the county who were Asian American. We used data from the 2018 American Community Survey (ACS) five-year estimates, downloaded from the Integrated Public Use Microdata Series (IPUMS) to create county-level population demographic variables.27 IPUMS is publicly available, and the database integrates samples using ACS data from 2000 to the present using a high degree of precision.27 We applied survey weights to calculate the following variables at the county-level: median age among Asian Americans, average income to poverty ratio among Asian Americans, the percentage of the county population that is Filipinx, and the percentage of healthcare workers in the county who are Filipinx. Healthcare workers encompassed all healthcare practitioners, technical occupations, and healthcare service occupations, including nurse practitioners, physicians, surgeons, dentists, physical therapists, home health aides, personal care aides, and other medical technicians and healthcare support workers. County-level data were available for 107 out of the 133 counties (80.5%) that had NCHS data on the distribution of COVID-19 deaths among Asian Americans, and 96 counties (72.2%) with Asian American healthcare workforce data. The ACS 2018 five-year estimates were also the source of county-level percentage of the Asian American population (alone or in combination) who are Filipinx.8 In addition, the ACS provided county-level population counts26 to calculate population density (people per 1,000 people per square mile), estimated by dividing the total population by the county area, then dividing by 1,000 people. The county area was calculated in ArcGIS 10.7.1 using the county boundary shapefile and projected to Albers equal area conic (for counties in the US contiguous states), Hawai’i Albers Equal Area Conic (for Hawai’i counties), and Alaska Albers Equal Area Conic (for Alaska counties).20

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Share
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Click to copy link
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Close
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Lang Peng; Yi Wu; Jiayi Sun; Yihong Xing; Mingqin Li; Mingzi Li (2025). Will Artificial Intelligence Nurse Practitioners Become True? Performance Evaluation of ChatGPT in the American Association of Nurse Practitioners Exam - Supporting Data [Dataset]. http://doi.org/10.5772/acrt.deposit.28444424.v1

Will Artificial Intelligence Nurse Practitioners Become True? Performance Evaluation of ChatGPT in the American Association of Nurse Practitioners Exam - Supporting Data

Explore at:
xlsxAvailable download formats
Dataset updated
Apr 11, 2025
Dataset provided by
IntechOpen
Authors
Lang Peng; Yi Wu; Jiayi Sun; Yihong Xing; Mingqin Li; Mingzi Li
License

Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically

Description

Nurse Practitioners play a vital role in contributing to the UN's Sustainable Development Goals, and Universal Health Coverage, especially the management of chronic noncommunicable diseases. Artificial intelligence tools such as ChatGPT are becoming promising resources for healthcare professionals. This study aimed to explore the capability of ChatGPT as a Nurse Practitioner by validating the performance of ChatGPT-3.5 and GPT-4 in the American Association of Nurse Practitioners (AANP) practice examinations. Questions from exams for five Nurse Practitioner disciplines were used to evaluate the accuracy and consistency of the responses in two phases. In the first phase, the accuracy rates and concordance of answers between the two versions with the five exam sets, totaling 535 questions were analyzed. In the second phase, the consistency of ChatGPT-4 performance in six retests, each involving five random questions from each set. ChatGPT-3.5 achieved an overall accuracy rate of 80.6%, while ChatGPT-4 achieved 90.7%. ChatGPT-3.5 and ChatGPT-4 showed strong consistency within all sets, while ChatGPT-4 performed better than ChatGPT-3.5. In the retests, ChatGPT-4 provided exactly the same answers as generated initially, including the incorrect ones. In conclusion, ChatGPT demonstrated excellent performance in AANP practice exams, with high levels of accuracy and consistency. This suggests that ChatGPT may support nurse practitioners in making clinical decisions and improving efficiency. Further studies could explore ways to integrate artificial intelligence tools with nurse practitioner practice to enhance the advanced practice nursing workforce.

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