Treating Pain in Patients with Ehlers-Danlos Syndrome : Multidisciplinary Management of a Multisystemic Disease.
Schmerz (Berlin, Germany)(2024)
Department of Neurology | Center for Complex Conditions
Abstract
BACKGROUND:The clinical picture of people with Ehlers-Danlos syndromes (EDS) is complex and involves a variety of potential causes of pain. This poses major challenges to patients and healthcare professionals alike in terms of diagnosis and management of the condition.OBJECTIVES:The aim of the article was to provide an overview of the specific pain management needs of patients with EDS and address their background.MATERIAL AND METHODS:A selective literature search was performed to highlight the current state of research on pain management in EDS patients.RESULTS:Affected patients require multimodal pain management considering their individual needs, disease-specific features, and comorbidities.CONCLUSION:Medical awareness and evidence need to be further improved to enhance the medical care situation of these patients with complex needs.
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