Abstract
Background: Endometriosis is a complex gynecological condition affecting millions of women worldwide. Despite its prevalence, diagnosing endometriosis poses significant challenges due to a lack of awareness and understanding among healthcare professionals. Aim: This study aims to explore the diagnostic challenges associated with endometriosis and the crucial role of nurses in providing care for women with this condition. Method: A systematic literature review was conducted to identify relevant studies addressing endometriosis diagnosis challenges and the role of nurses in patient care. Electronic databases such as PubMed and CINAHL were searched using specific keywords related to endometriosis and nursing care. Results: The review revealed significant gaps in the diagnosis of endometriosis, including delays in diagnosis and mismanagement of symptoms. Nurses play a critical role in supporting women with endometriosis through education, emotional support, and symptom management. Conclusion: Improved education and awareness among healthcare professionals, including nurses, are essential for timely diagnosis and effective management of endometriosis. Nurses' involvement in the care of women with endometriosis is crucial for enhancing patient outcomes and quality of life.
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