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Status of digitization of medical records in oncology centers in India: A survey of current status.
1
Zitationen
3
Autoren
2020
Jahr
Abstract
306 Background: Electronic medical or health record (EMR/EHR) system is yet to be universally adopted in India. In 2012 and 2016 Indian Ministry of Health published a detailed roadmap for EHR adoption. We wanted to assess the status of EMR/EHR adoption in oncology centers in India. Methods: Authors developed a short online survey to capture the use of paper charts vs. generic EMR vs. oncology specific EMR by practicing oncologists in India. The survey was shared to oncologists on June 6, 2020 through closed social media groups. Responses to the survey were collected anonymously and data aggregated for analysis. Survey will remain open till July 4, 2020. Results: At the time of abstract submission on June 16, there were 48 unique survey responses. Of those who responded to the survey, 69% were 25-45 years of age, 73% male, 71% were practicing in the state of Tamil Nadu, and 21% were practicing in a rural area or close to a small city. Oncologists from all subspecialties were represented in the survey including radiation oncology (65%), surgical oncology (25%), medical oncology (6%), and pediatric oncology/nuclear medicine (4%). About 46% had completed their training within the last 10 years, and 30% of respondents have done part of their training in foreign countries. Summary of responses to our survey is provided in the table below. Conclusions: Paper chart is still the predominant mode of clinical data capture within oncology. Administrative barriers and cost are perceived as major obstacles despite most oncologists reporting that they would very likely adapt to an onco specific EMR. [Table: see text]
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