Suppr超能文献

用于解读军犬即时超声检查结果的深度学习模型。

Deep learning models for interpretation of point of care ultrasound in military working dogs.

作者信息

Hernandez Torres Sofia I, Holland Lawrence, Edwards Thomas H, Venn Emilee C, Snider Eric J

机构信息

Organ Support and Automation Technologies Group, U.S. Army Institute of Surgical Research, JBSA Fort Sam Houston, San Antonio, TX, United States.

Hemorrhage Control and Vascular Dysfunction Group, U.S. Army Institute of Surgical Research, JBSA Fort Sam Houston, San Antonio, TX, United States.

出版信息

Front Vet Sci. 2024 Jun 6;11:1374890. doi: 10.3389/fvets.2024.1374890. eCollection 2024.

Abstract

INTRODUCTION

Military working dogs (MWDs) are essential for military operations in a wide range of missions. With this pivotal role, MWDs can become casualties requiring specialized veterinary care that may not always be available far forward on the battlefield. Some injuries such as pneumothorax, hemothorax, or abdominal hemorrhage can be diagnosed using point of care ultrasound (POCUS) such as the Global FAST® exam. This presents a unique opportunity for artificial intelligence (AI) to aid in the interpretation of ultrasound images. In this article, deep learning classification neural networks were developed for POCUS assessment in MWDs.

METHODS

Images were collected in five MWDs under general anesthesia or deep sedation for all scan points in the Global FAST® exam. For representative injuries, a cadaver model was used from which positive and negative injury images were captured. A total of 327 ultrasound clips were captured and split across scan points for training three different AI network architectures: MobileNetV2, DarkNet-19, and ShrapML. Gradient class activation mapping (GradCAM) overlays were generated for representative images to better explain AI predictions.

RESULTS

Performance of AI models reached over 82% accuracy for all scan points. The model with the highest performance was trained with the MobileNetV2 network for the cystocolic scan point achieving 99.8% accuracy. Across all trained networks the diaphragmatic hepatorenal scan point had the best overall performance. However, GradCAM overlays showed that the models with highest accuracy, like MobileNetV2, were not always identifying relevant features. Conversely, the GradCAM heatmaps for ShrapML show general agreement with regions most indicative of fluid accumulation.

DISCUSSION

Overall, the AI models developed can automate POCUS predictions in MWDs. Preliminarily, ShrapML had the strongest performance and prediction rate paired with accurately tracking fluid accumulation sites, making it the most suitable option for eventual real-time deployment with ultrasound systems. Further integration of this technology with imaging technologies will expand use of POCUS-based triage of MWDs.

摘要

引言

军犬对于广泛任务中的军事行动至关重要。鉴于这一关键作用,军犬可能会受伤,需要专业兽医护理,而在战场上前沿地区这种护理可能并不总是能随时提供。一些损伤,如气胸、血胸或腹部出血,可以使用即时超声检查(POCUS),如全球快速评估(Global FAST®)检查来诊断。这为人工智能(AI)辅助超声图像解读提供了独特机会。在本文中,开发了深度学习分类神经网络用于军犬的POCUS评估。

方法

在全身麻醉或深度镇静下,对五只军犬进行全球快速评估检查的所有扫描点的图像采集。对于具有代表性的损伤,使用尸体模型采集阳性和阴性损伤图像。共采集了327个超声片段,并按扫描点进行划分,用于训练三种不同的人工智能网络架构:MobileNetV2、DarkNet - 19和ShrapML。为代表性图像生成梯度类激活映射(GradCAM)叠加图,以更好地解释人工智能预测结果。

结果

所有扫描点的人工智能模型性能准确率均超过82%。性能最高的模型是使用MobileNetV2网络训练的,用于膀胱结肠扫描点,准确率达到99.8%。在所有训练的网络中,膈下肝肾扫描点的整体性能最佳。然而,GradCAM叠加图显示,像MobileNetV2这样准确率最高的模型并不总是能识别相关特征。相反,ShrapML的GradCAM热图与最能指示液体聚集的区域总体一致。

讨论

总体而言,所开发的人工智能模型可以使军犬的POCUS预测自动化。初步来看,ShrapML性能最强,预测率高,且能准确跟踪液体聚集部位,使其成为最终与超声系统实时部署的最合适选择。这项技术与成像技术的进一步整合将扩大基于POCUS的军犬分诊的应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7d51/11187302/709ca61a7671/fvets-11-1374890-g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验