Accessible Modelling of Complexity in Health (AMoCH) and associated data flows: asthma as an exemplar

Bibliographic Details
Title: Accessible Modelling of Complexity in Health (AMoCH) and associated data flows: asthma as an exemplar
Authors: Harshana Liyanage, Daniela Luzi, Simon de Lusignan, Fabrizio Pecoraro, Richard McNulty, Oscar Tamburis, Paul Krause, Michael Rigby, Mitch Blair
Source: Journal of Innovation in Health Informatics, Vol 23, Iss 1 (2016)
Publisher Information: BCS, The Chartered Institute for IT, 2016.
Publication Year: 2016
Collection: LCC:Computer applications to medicine. Medical informatics
Subject Terms: Interdisciplinary Communication, information systems, health information exchange, informatics, Systems Analysis, Computer applications to medicine. Medical informatics, R858-859.7
More Details: Background Modelling is an important part of information science. Models are abstractions of reality. We use models in the following contexts: (1) to describe the data and information flows in clinical practice to information scientists, (2) to compare health systems and care pathways, (3) to understand how clinical cases are recorded in record systems and (4) to model health care business models. Asthma is an important condition associated with a substantial mortality and morbidity. However, there are difficulties in determining who has the condition, making both its incidence and prevalence uncertain. Objective To demonstrate an approach for modelling complexity in health using asthma prevalence and incidence as an exemplar. Method The four steps in our process are: 1. Drawing a rich picture, following Checkland’s soft systems methodology; 2. Constructing data flow diagrams (DFDs); 3. Creating Unified Modelling Language (UML) use case diagrams to describe the interaction of the key actors with the system; 4. Activity diagrams, either UML activity diagram or business process modelling notation diagram. Results Our rich picture flagged the complexity of factors that might impact on asthma diagnosis. There was consensus that the principle issue was that there were undiagnosed and misdiagnosed cases as well as correctly diagnosed. Genetic predisposition to atopy; exposure to environmental triggers; impact of respiratory health on earnings or ability to attend education or participate in sport, charities, pressure groups and the pharmaceutical industry all increased the likelihood of a diagnosis of asthma. Stigma and some factors within the health system diminished the likelihood of a diagnosis. The DFDs and other elements focused on better case finding. Conclusions This approach flagged the factors that might impact on the reported prevalence or incidence of asthma. The models suggested that applying selection criteria may improve the specificity of new or confirmed diagnosis.
Document Type: article
File Description: electronic resource
Language: English
ISSN: 2058-4555
2058-4563
Relation: https://hijournal.bcs.org/index.php/jhi/article/view/863; https://doaj.org/toc/2058-4555; https://doaj.org/toc/2058-4563
DOI: 10.14236/jhi.v23i1.863
Access URL: https://doaj.org/article/cbbd65ef8764433dbb4e009e1fef1eef
Accession Number: edsdoj.bbd65ef8764433dbb4e009e1fef1eef
Database: Directory of Open Access Journals
More Details
ISSN:20584555
20584563
DOI:10.14236/jhi.v23i1.863
Published in:Journal of Innovation in Health Informatics
Language:English