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Developing a Case-Based Blended Learning Ecosystem to Optimize Precision Medicine: Reducing Overdiagnosis and Overtreatment

Introduction: Precision medicine aims to focus on meeting patient requirements accurately, optimizing patient outcomes, and reducing under-/overdiagnosis and therapy. We aim to offer a fresh perspective on accuracy driven “age-old precision medicine” and illustrate how newer case-based blended learn...

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Autores principales: Podder, Vivek, Dhakal, Binod, Shaik, Gousia Ummae Salma, Sundar, Kaushik, Sivapuram, Madhava Sai, Chattu, Vijay Kumar, Biswas, Rakesh
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6163835/
https://www.ncbi.nlm.nih.gov/pubmed/29996517
http://dx.doi.org/10.3390/healthcare6030078
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author Podder, Vivek
Dhakal, Binod
Shaik, Gousia Ummae Salma
Sundar, Kaushik
Sivapuram, Madhava Sai
Chattu, Vijay Kumar
Biswas, Rakesh
author_facet Podder, Vivek
Dhakal, Binod
Shaik, Gousia Ummae Salma
Sundar, Kaushik
Sivapuram, Madhava Sai
Chattu, Vijay Kumar
Biswas, Rakesh
author_sort Podder, Vivek
collection PubMed
description Introduction: Precision medicine aims to focus on meeting patient requirements accurately, optimizing patient outcomes, and reducing under-/overdiagnosis and therapy. We aim to offer a fresh perspective on accuracy driven “age-old precision medicine” and illustrate how newer case-based blended learning ecosystems (CBBLE) can strengthen the bridge between age-old precision approaches with modern technology and omics-driven approaches. Methodology: We present a series of cases and examine the role of precision medicine within a “case-based blended learning ecosystem” (CBBLE) as a practicable tool to reduce overdiagnosis and overtreatment. We illustrated the workflow of our CBBLE through case-based narratives from global students of CBBLE in high and low resource settings as is reflected in global health. Results: Four micro-narratives based on collective past experiences were generated to explain concepts of age-old patient-centered scientific accuracy and precision and four macro-narratives were collected from individual learners in our CBBLE. Insights gathered from a critical appraisal and thematic analysis of the narratives were discussed. Discussion and conclusion: Case-based narratives from the individual learners in our CBBLE amply illustrate their journeys beginning with “age-old precision thinking” in low-resource settings and progressing to “omics-driven” high-resource precision medicine setups to demonstrate how the approaches, used judiciously, might reduce the current pandemic of over-/underdiagnosis and over-/undertreatment.
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spelling pubmed-61638352018-10-10 Developing a Case-Based Blended Learning Ecosystem to Optimize Precision Medicine: Reducing Overdiagnosis and Overtreatment Podder, Vivek Dhakal, Binod Shaik, Gousia Ummae Salma Sundar, Kaushik Sivapuram, Madhava Sai Chattu, Vijay Kumar Biswas, Rakesh Healthcare (Basel) Article Introduction: Precision medicine aims to focus on meeting patient requirements accurately, optimizing patient outcomes, and reducing under-/overdiagnosis and therapy. We aim to offer a fresh perspective on accuracy driven “age-old precision medicine” and illustrate how newer case-based blended learning ecosystems (CBBLE) can strengthen the bridge between age-old precision approaches with modern technology and omics-driven approaches. Methodology: We present a series of cases and examine the role of precision medicine within a “case-based blended learning ecosystem” (CBBLE) as a practicable tool to reduce overdiagnosis and overtreatment. We illustrated the workflow of our CBBLE through case-based narratives from global students of CBBLE in high and low resource settings as is reflected in global health. Results: Four micro-narratives based on collective past experiences were generated to explain concepts of age-old patient-centered scientific accuracy and precision and four macro-narratives were collected from individual learners in our CBBLE. Insights gathered from a critical appraisal and thematic analysis of the narratives were discussed. Discussion and conclusion: Case-based narratives from the individual learners in our CBBLE amply illustrate their journeys beginning with “age-old precision thinking” in low-resource settings and progressing to “omics-driven” high-resource precision medicine setups to demonstrate how the approaches, used judiciously, might reduce the current pandemic of over-/underdiagnosis and over-/undertreatment. MDPI 2018-07-10 /pmc/articles/PMC6163835/ /pubmed/29996517 http://dx.doi.org/10.3390/healthcare6030078 Text en © 2018 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Podder, Vivek
Dhakal, Binod
Shaik, Gousia Ummae Salma
Sundar, Kaushik
Sivapuram, Madhava Sai
Chattu, Vijay Kumar
Biswas, Rakesh
Developing a Case-Based Blended Learning Ecosystem to Optimize Precision Medicine: Reducing Overdiagnosis and Overtreatment
title Developing a Case-Based Blended Learning Ecosystem to Optimize Precision Medicine: Reducing Overdiagnosis and Overtreatment
title_full Developing a Case-Based Blended Learning Ecosystem to Optimize Precision Medicine: Reducing Overdiagnosis and Overtreatment
title_fullStr Developing a Case-Based Blended Learning Ecosystem to Optimize Precision Medicine: Reducing Overdiagnosis and Overtreatment
title_full_unstemmed Developing a Case-Based Blended Learning Ecosystem to Optimize Precision Medicine: Reducing Overdiagnosis and Overtreatment
title_short Developing a Case-Based Blended Learning Ecosystem to Optimize Precision Medicine: Reducing Overdiagnosis and Overtreatment
title_sort developing a case-based blended learning ecosystem to optimize precision medicine: reducing overdiagnosis and overtreatment
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6163835/
https://www.ncbi.nlm.nih.gov/pubmed/29996517
http://dx.doi.org/10.3390/healthcare6030078
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