Development of an external quality assurance (EQA) structure to evaluate the quality of genetic pathology reporting
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Badrick, Tony
Tseung, Jason
Frogley, Maddison
Chai, Sze Yee
Lidbury, Brett A.
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A standard for reporting genetic pathology results currently does not exist as a consensus. While effective reports are produced, there is lack of consistency on which details to present or to emphasise, and the ultimate report often reflects an individual practitioner's preferences derived from anecdotal experience. Genetic knowledge is complex, so poor and/or inconsistent reporting could make the application of pathology results to patient management more challenging than necessary. The aim of this study was to combine expert knowledge with machine learning (ML) applications to design a template to encourage consistent and accurate genetic reporting. To investigate genetic reporting quality within Australasia, past melanoma genetics reports produced in response to RCPA Quality Assurance Program (RCPAQAP) audits were compiled for retrospective text analyses to determine word frequencies and patterns. These text pattern analyses were supported by an investigation of reporting criteria consistency for solid tumours, as well as a narrative review of the broader literature, by a genetic pathology expert to contextualise these results, with the ultimate results combined into a suggested template. These results will be augmented via further ML studies on report structure.
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Clinica Chimica Acta
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