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Main Authors: Slavkova, Kalina P., Traughber, Melanie, Chen, Oliver, Bakos, Robert, Goldstein, Shayna, Harms, Dan, Erickson, Bradley J., Siddiqui, Khan M.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.17891
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author Slavkova, Kalina P.
Traughber, Melanie
Chen, Oliver
Bakos, Robert
Goldstein, Shayna
Harms, Dan
Erickson, Bradley J.
Siddiqui, Khan M.
author_facet Slavkova, Kalina P.
Traughber, Melanie
Chen, Oliver
Bakos, Robert
Goldstein, Shayna
Harms, Dan
Erickson, Bradley J.
Siddiqui, Khan M.
contents Technological advances in artificial intelligence (AI) have enabled the development of large vision language models (LVLMs) that are trained on millions of paired image and text samples. Subsequent research efforts have demonstrated great potential of LVLMs to achieve high performance in medical imaging use cases (e.g., radiology report generation), but there remain barriers that hinder the ability to deploy these solutions broadly. These include the cost of extensive computational requirements for developing large scale models, expertise in the development of sophisticated AI models, and the difficulty in accessing substantially large, high-quality datasets that adequately represent the population in which the LVLM solution is to be deployed. The HOPPR Medical-Grade Platform addresses these barriers by providing powerful computational infrastructure, a suite of foundation models on top of which developers can fine-tune for their specific use cases, and a robust quality management system that sets a standard for evaluating fine-tuned models for deployment in clinical settings. The HOPPR Platform has access to millions of imaging studies and text reports sourced from hundreds of imaging centers from diverse populations to pretrain foundation models and enable use case-specific cohorts for fine-tuning. All data are deidentified and securely stored for HIPAA compliance. Additionally, developers can securely host models on the HOPPR platform and access them via an API to make inferences using these models within established clinical workflows. With the Medical-Grade Platform, HOPPR's mission is to expedite the deployment of LVLM solutions for medical imaging and ultimately optimize radiologist's workflows and meet the growing demands of the field.
format Preprint
id arxiv_https___arxiv_org_abs_2411_17891
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle HOPPR Medical-Grade Platform for Medical Imaging AI
Slavkova, Kalina P.
Traughber, Melanie
Chen, Oliver
Bakos, Robert
Goldstein, Shayna
Harms, Dan
Erickson, Bradley J.
Siddiqui, Khan M.
Computation and Language
Artificial Intelligence
Computer Vision and Pattern Recognition
Technological advances in artificial intelligence (AI) have enabled the development of large vision language models (LVLMs) that are trained on millions of paired image and text samples. Subsequent research efforts have demonstrated great potential of LVLMs to achieve high performance in medical imaging use cases (e.g., radiology report generation), but there remain barriers that hinder the ability to deploy these solutions broadly. These include the cost of extensive computational requirements for developing large scale models, expertise in the development of sophisticated AI models, and the difficulty in accessing substantially large, high-quality datasets that adequately represent the population in which the LVLM solution is to be deployed. The HOPPR Medical-Grade Platform addresses these barriers by providing powerful computational infrastructure, a suite of foundation models on top of which developers can fine-tune for their specific use cases, and a robust quality management system that sets a standard for evaluating fine-tuned models for deployment in clinical settings. The HOPPR Platform has access to millions of imaging studies and text reports sourced from hundreds of imaging centers from diverse populations to pretrain foundation models and enable use case-specific cohorts for fine-tuning. All data are deidentified and securely stored for HIPAA compliance. Additionally, developers can securely host models on the HOPPR platform and access them via an API to make inferences using these models within established clinical workflows. With the Medical-Grade Platform, HOPPR's mission is to expedite the deployment of LVLM solutions for medical imaging and ultimately optimize radiologist's workflows and meet the growing demands of the field.
title HOPPR Medical-Grade Platform for Medical Imaging AI
topic Computation and Language
Artificial Intelligence
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2411.17891