Abstract
AbstractIn the realm of disease prognosis and diagnosis, a plethora of medical images are utilized. These images are typically stored either within the local on-premises servers of healthcare providers or within cloud storage infrastructures. However, this conventional storage approach often incurs high infrastructure costs and results in sluggish information retrieval, ultimately leading to delays in diagnosis and consequential wastage of valuable time for patients. The methodology proposed in this paper offers a pioneering solution to expedite the diagnosis of medical conditions while simultaneously reducing infrastructure costs associated with data storage. Through this study, a high-speed biomedical image processing approach is designed to facilitate rapid prognosis and diagnosis. The proposed framework includes Deep learning QR code technique using an optimized database design aimed at alleviating the burden of intensive on-premises database requirements. The work includes medical dataset from Crawford Image and Data Archive and Duke CIVM for evaluating the proposed work suing different performance metrics, The work has also been compared from the previous research further enhancing the system's efficiency. By providing healthcare providers with high-speed access to medical records, this system enables swift retrieval of comprehensive patient details, thereby improving accuracy in diagnosis and supporting informed decision-making.
Publisher
Springer Science and Business Media LLC
Reference29 articles.
1. Society to Improve Diagnosis in Medicine Available online: https://www.improvediagnosis.org/#:~:text=Diagnostic%20errors%20affect%20an%20estimated,all%20other%20medical%20errors%20combined.&text=Roughly%2080%2C000%20deaths%20in%20U.S.,be%20attributed%20to%20diagnostic%20error. Accessed Oct 2023.
2. Paramasivam S, Thomas B, Chandran P, Thayyil J, George B, Sivakumar CP. Diagnostic delay and associated factors among patients with pulmonary tuberculosis in Kerala. J Family Med Prim Care. 2017;6(3):643–8. https://doi.org/10.4103/2249-4863.222052. PMID: 29417023; PMCID: PMC5787970.
3. Suneja M, Beekmann SE, Dhaliwal G, Miller AC, Polgreen PM. Diagnostic delays in infectious diseases. Diagnosis (Berl). 2022;9(3):332–9. https://doi.org/10.1515/dx-2021-0092. PMID:35073468;PMCID:PMC9424060.
4. Newman-Toker DE, Nassery N, Schaffer AC, et al. Burden of serious harms from diagnostic error in the USA. BMJ Qual Saf. 2024;33:109–20.
5. Study Suggests Medical Errors Now Third Leading Cause of Death in the U.S. - 05/03/2016 Available online: https://www.hopkinsmedicine.org/news/media/releases/study_suggests_medical_errors_now_third_leading_cause_of_death_in_the_us.