Vblog

This video blog, or sometimes shortened to vblog for which the medium is video, is a collection of videos – my picks of videos found on the free web services like YouTube or Vimeo with related issues that impact the Health Information Management (HIM) / Medical Records (MR) profession.This Vblog is a static page with a series of embedded videos shown in a grid. Each video has a short description and a new video is added to the Vblog page when I pick a video to share. Readers can still comment on the video(s) by referring to the video number(s) off the grid.

A COLLECTION OF VIDEOS WITH RELATED ISSUES THAT IMPACT THE HEALTH INFORMATION MANAGEMENT (HIM) / MEDICAL RECORDS (MR) PROFESSION


What is EMR?"
EMR means different things to different people according to emrsimplyput.com/. This video presents the difference between an electronic medical record and an electronic medical records system.
Video credit: explainingcomputers.com

Health Information Highway
An American Health Information Management Association (AHIMA) video for community based public education
Video credit: Kathy Webb

How to use terminal digit?
Video credit: Kathy Webb

Medical Terminology
Video credit: The Professor Penguin College Success Series – How to Approach Medical Terminology

The Mind of a Coder
An American Health Information Management Association (AHIMA) Video Contest Entry
Video credit: AHIMA

MRI and CT Scan – the differences
CT Scan (the acronym for Computerized Axial Tomography), MRI (the acronym for Magnetic Resonance Imaging) are two acronyms Health Information Management (HIM) / Medical Records (MR) practitioners have surely encountered in managing their medical records and radiology images.
Video credit: The original video was made at the London Oncology Clinic, now known as Leaders in Oncology Care

How do we consume data?
In this TED video, listen to Rangaswami tell us about how he thinks deeply (and hilariously) about disruptive data, and muses about our relationship to information, and offers a surprising and sharp insight: we treat it like food.
Video credit: TED: Ideas worth spreading

Big Data is the next big thing in computing.
This video explains Big Data characteristics, technologies and opportunities.
Video credit: explainingcomputers.com

The Medical Record: A tool for providing problem-oriented patient care
In this timeless video taken in 1971 at the Grand Rounds at Emory University, Dr Lawrence Weed spoke on the problem-orientated medical record (POMR) approach based on an article titled “Medical Records that Guide and Teach” which he published in 1968, where organised problem lists and medical records are critical to clear decision-making.
Video credit: Youtube

Problem Oriented Medical Record (POMR)
Explanation of the Problem List and it’s importance in documenting it in a patient encounter based on Dr Lawrence Weed’s book on POMR.
Video credit: Dr Steve Walsh, specialist physician at Tygerberg Hospital in the Western Cape (South Africa), and also a senior lecturer at Stellenbosch University Faculty of Health Sciences, Tygerberg,Cape Town, South Africa

Recent Posts

EHR data and AI to predict response to antidepressant treatment

Antidepressants are frequently prescribed for adults with depression, a common and often disabling psychiatric condition. However, identifying the most effective treatment for a particular patient is often a trial-and-error process that can result in prolonged morbidity, disability, and exposure to adverse effects, as well as substantial healthcare costs. Precision psychiatry aims to optimise treatment matching using patient-specific profiles, but there are few evidence-based predictors available to clinicians initiating antidepressant treatment.

Although average response rates are similar across different antidepressant classes, individual responses can vary widely in clinical practice. Therefore, accurately and scalably guiding antidepressant selection presents specific challenges. The gold standard for characterising antidepressant response from electronic health records (EHRs) remains expert chart review, which is labor- and time-intensive.

However, advances in machine learning (ML) and the growing availability of large-scale health data, such as EHRs, offer new opportunities for developing clinical decision-support tools that may address this challenge. In a recent study published in the peer-reviewed open-access medical journal Nature Partner Journals (npc) Digital Medicine, researchers used machine learning models to accurately predict differential treatment response probabilities for patients and between antidepressant classes based on real-world EHR data. The pipeline incorporated AI and non-AI features, as well as unstructured data (i.e. clinical notes) to maximize the use of information contained in EHRs.

The study included 17,556 patients who received a new antidepressant prescription from non-psychiatrists, and data were obtained from 20 years of EHRs spanning from January 1990 to August 2018. The patients had at least one International Classification of Diseases (ICD) code for depression and at least one ICD code for non-recurrent depression during their history.

ICD codes from EHR data were obtained for adult patients (age ≥ 18 years) with at least one visit (the first visit with an antidepressant prescription is defined as the “index visit” for each patient) with a diagnostic ICD code for a depressive disorder (defined as ICD-9-CM: 296.20–6, 296.30–6, and 311; ICD-10-CM: F32.0–9, F33.0–9) co-occurring with an antidepressant prescription, and at least one ICD code for non-recurrent depression (ICD-9-CM: 296.20–6 and 311; ICD-10-CM: F32.0–9) any time during their history.

The resulting models achieved good accuracy, discrimination, and positive predictive value, which could be valuable for further efforts aiming to provide clinical decision support for prescribers. However, the researchers noted several limitations, including missing data in EHRs(e.g. patients who may receive some of their care outside of the healthcare system), and secular trends in clinician prescribing or documentation practices that may have affected model performance.

In summary, the study presents a novel computational pipeline based on real-world EHR data for predicting differential responses to commonly used classes of antidepressants. The approach demonstrated here could be adapted to a wide variety of other clinical applications for optimising and individualising treatment selection.

REFERENCES:

  1. Sheu, Yh., Magdamo, C., Miller, M. et al. AI-assisted prediction of differential response to antidepressant classes using electronic health records. npj Digit. Med. 6, 73 (2023). https://doi.org/10.1038/s41746-023-00817-8


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