Authors :
Anjanava Biswas; Wrick Talukdar
Volume/Issue :
Volume 9 - 2024, Issue 5 - May
Google Scholar :
https://tinyurl.com/dt5evnva
Scribd :
https://tinyurl.com/bdzmpmmj
DOI :
https://doi.org/10.38124/ijisrt/IJISRT24MAY1483
Note : A published paper may take 4-5 working days from the publication date to appear in PlumX Metrics, Semantic Scholar, and ResearchGate.
Abstract :
Comprehensive clinical documentation is
crucial for effective healthcare delivery, yet it poses a
significant burden on healthcare professionals, leading to
burnout, increased medical errors, and compromised
patient safety. This paper explores the potential of
generative AI (Artificial Intelligence) to streamline the
clinical documentation process, specifically focusing on
generating SOAP (Subjective, Objective, Assessment,
Plan) and BIRP (Behavior, Intervention, Response, Plan)
notes. We present a case study demonstrating the
application of natural language processing (NLP) and
automatic speech recognition (ASR) technologies to
transcribe patient-clinician interactions, coupled with
advanced prompting techniques to generate draft clinical
notes using large language models (LLMs). The study
highlights the benefits of this approach, including time
savings, improved documentation quality, and enhanced
patient-centered care. Additionally, we discuss ethical
considerations, such as maintaining patient
confidentiality and addressing model biases,
underscoring the need for responsible deployment of
generative AI in healthcare settings. The findings suggest
that generative AI has the potential to revolutionize
clinical documentation practices, alleviating
administrative burdens and enabling healthcare
professionals to focus more on direct patient care.
References :
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- Al-Ghunaim T, Johnson J, Biyani CS, Yiasemidou M, O’Connor DB. Burnout and patient safety perceptions among surgeons in the United Kingdom during the early phases of the coronavirus disease 2019 pandemic: A two-wave survey. Scottish Medical Journal. 2023;68(2):41-48.
- Hall LH, Johnson J, Watt I, Tsipa A, O'Connor DB. Healthcare Staff Wellbeing, Burnout, and Patient Safety: A Systematic Review. PLoS One. 2016 Jul 8;11(7):e0159015. doi: 10.1371/journal.pone.0159015. PMID: 27391946; PMCID: PMC4938539.
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Comprehensive clinical documentation is
crucial for effective healthcare delivery, yet it poses a
significant burden on healthcare professionals, leading to
burnout, increased medical errors, and compromised
patient safety. This paper explores the potential of
generative AI (Artificial Intelligence) to streamline the
clinical documentation process, specifically focusing on
generating SOAP (Subjective, Objective, Assessment,
Plan) and BIRP (Behavior, Intervention, Response, Plan)
notes. We present a case study demonstrating the
application of natural language processing (NLP) and
automatic speech recognition (ASR) technologies to
transcribe patient-clinician interactions, coupled with
advanced prompting techniques to generate draft clinical
notes using large language models (LLMs). The study
highlights the benefits of this approach, including time
savings, improved documentation quality, and enhanced
patient-centered care. Additionally, we discuss ethical
considerations, such as maintaining patient
confidentiality and addressing model biases,
underscoring the need for responsible deployment of
generative AI in healthcare settings. The findings suggest
that generative AI has the potential to revolutionize
clinical documentation practices, alleviating
administrative burdens and enabling healthcare
professionals to focus more on direct patient care.