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Autori principali: Walser, Eric, McCaffrey, Peter, Clark, Kal, Czarnek, Nicholas
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2509.23930
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author Walser, Eric
McCaffrey, Peter
Clark, Kal
Czarnek, Nicholas
author_facet Walser, Eric
McCaffrey, Peter
Clark, Kal
Czarnek, Nicholas
contents This case study details The University of Texas Medical Branch (UTMB)'s partnership with Zauron Labs, Inc. to enhance detection and coding of aortic calcifications (ACs) using chest radiographs. ACs are often underreported despite their significant prognostic value for cardiovascular disease, and UTMB partnered with Zauron to apply its advanced AI tools, including a high-performing image model (AUC = 0.938) and a fine-tuned language model based on Meta's Llama 3.2, to retrospectively analyze imaging and report data. The effort identified 495 patients out of 3,988 unique patients assessed (5,000 total exams) whose reports contained indications of aortic calcifications that were not properly coded for reimbursement (12.4% miscode rate) as well as an additional 84 patients who had aortic calcifications that were missed during initial review (2.1% misdiagnosis rate). Identification of these patients provided UTMB with the potential to impact clinical care for these patients and pursue $314k in missed annual revenue. These findings informed UTMB's decision to adopt Zauron's Guardian Pro software system-wide to ensure accurate, AI-enhanced peer review and coding, improving both patient care and financial solvency. This study is covered under University of Texas Health San Antonio's Institutional Review Board Study ID 00001887.
format Preprint
id arxiv_https___arxiv_org_abs_2509_23930
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A University of Texas Medical Branch Case Study on Aortic Calcification Detection
Walser, Eric
McCaffrey, Peter
Clark, Kal
Czarnek, Nicholas
Image and Video Processing
Computer Vision and Pattern Recognition
92C55
This case study details The University of Texas Medical Branch (UTMB)'s partnership with Zauron Labs, Inc. to enhance detection and coding of aortic calcifications (ACs) using chest radiographs. ACs are often underreported despite their significant prognostic value for cardiovascular disease, and UTMB partnered with Zauron to apply its advanced AI tools, including a high-performing image model (AUC = 0.938) and a fine-tuned language model based on Meta's Llama 3.2, to retrospectively analyze imaging and report data. The effort identified 495 patients out of 3,988 unique patients assessed (5,000 total exams) whose reports contained indications of aortic calcifications that were not properly coded for reimbursement (12.4% miscode rate) as well as an additional 84 patients who had aortic calcifications that were missed during initial review (2.1% misdiagnosis rate). Identification of these patients provided UTMB with the potential to impact clinical care for these patients and pursue $314k in missed annual revenue. These findings informed UTMB's decision to adopt Zauron's Guardian Pro software system-wide to ensure accurate, AI-enhanced peer review and coding, improving both patient care and financial solvency. This study is covered under University of Texas Health San Antonio's Institutional Review Board Study ID 00001887.
title A University of Texas Medical Branch Case Study on Aortic Calcification Detection
topic Image and Video Processing
Computer Vision and Pattern Recognition
92C55
url https://arxiv.org/abs/2509.23930