| Literature DB >> 34727303 |
Thomas Yi1,2, Ian Pan1,2, Scott Collins1, Fiona Chen1,2, Robert Cueto3, Ben Hsieh1, Celina Hsieh1,2, Jessica L Smith4, Li Yang5, Wei-Hua Liao6, Lisa H Merck2,4,3, Harrison Bai7,8, Derek Merck1,2,3.
Abstract
In the era of data-driven medicine, rapid access and accurate interpretation of medical images are becoming increasingly important. The DICOM Image ANalysis and Archive (DIANA) system is an open-source, lightweight, and scalable Python interface that enables users to interact with hospital Picture Archiving and Communications Systems (PACS) to access such data. In this work, DIANA functionality was detailed and evaluated in the context of retrospective PACS data retrieval and two prospective clinical artificial intelligence (AI) pipelines: bone age (BA) estimation and intra-cranial hemorrhage (ICH) detection. DIANA orchestrates activity beginning with post-acquisition study discovery and ending with online notifications of findings. For AI applications, system latency (exam completion to system report time) was quantified and compared to that of clinicians (exam completion to initial report creation time). Mean DIANA latency was 9.04 ± 3.83 and 20.17 ± 10.16 min compared to clinician latency of 51.52 ± 58.9 and 65.62 ± 110.39 min for BA and ICH, respectively, with DIANA latencies being significantly lower (p < 0.001). DIANA's capabilities were also explored and found effective in retrieving and anonymizing protected health information for "big-data" medical imaging research and analysis. Mean per-image retrieval times were 1.12 ± 0.50 and 0.08 ± 0.01 s across x-ray and computed tomography studies, respectively. The data herein demonstrate that DIANA can flexibly integrate into existing hospital infrastructure and improve the process by which researchers/clinicians access imaging repository data. This results in a simplified workflow for large data retrieval and clinical integration of AI models.Entities:
Keywords: Artificial intelligence; Bone age; DICOM; Intracranial hemorrhage; Machine learning; PACS
Mesh:
Year: 2021 PMID: 34727303 PMCID: PMC8669082 DOI: 10.1007/s10278-021-00488-5
Source DB: PubMed Journal: J Digit Imaging ISSN: 0897-1889 Impact factor: 4.903