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将热成像中的面部地标检测用作急诊科的新型预后工具。

Using Facial Landmark Detection on Thermal Images as a Novel Prognostic Tool for Emergency Departments.

作者信息

Baskaran Ruben, Møller Karim, Wiil Uffe Kock, Brabrand Mikkel

机构信息

Health Informatics and Technology, The Maersk Mc-Kinney Moller Institute, University of Southern Denmark, Odense, Denmark.

Department of Emergency Medicine, Odense University Hospital, Odense, Denmark.

出版信息

Front Artif Intell. 2022 Apr 29;5:815333. doi: 10.3389/frai.2022.815333. eCollection 2022.

Abstract

INTRODUCTION

Emergency departments (ED) at hospitals sometimes experience unexpected deterioration in patients that were assessed to be in a stable condition upon arrival. Odense University Hospital (OUH) has conducted a retrospective study to investigate the possibilities of prognostic tools that can detect these unexpected deterioration cases at an earlier stage. The study suggests that the temperature difference (gradient) between the core and the peripheral body parts can be used to detect these cases. The temperature between the patient's inner canthus (core temperature) and the tip of the nose (peripheral temperature) can be measured with a thermal camera. Based on the temperature measurement from a thermal image, a gradient value can be calculated, which can be used as an early indicator of potential deterioration.

PROBLEM

The lack of a tool to automatically calculate the gradient has prevented the ED at OUH in conducting a comprehensive prospective study on early indicators of patients at risk of deterioration. The current manual way of doing facial landmark detection on thermal images is too time consuming and not feasible as part of the daily workflow at the ED, where nurses have to triage patients within a few minutes.

OBJECTIVE

The objective of this study was to automate the process of calculating the gradient by developing a handheld prognostic tool that can be used by nurses for automatically performing facial landmark detection on thermal images of patients as they arrive at the ED.

METHODS

A systematic literature review has been conducted to investigate previous studies that have been done for applying computer vision methods on thermal images. Several meetings, interviews and field studies have been conducted with the ED at OUH in order to understand their workflow, formulate and prioritize requirements and co-design the prognostic tool.

RESULTS

The study resulted in a novel Android app that can capture a thermal image of a patient's face with a thermal camera attached to a smartphone. Within a few seconds, the app then automatically calculates the gradient to be used in the triage process. The developed tool is the first of its kind using facial landmark detection on thermal images for calculating a gradient that can serve as a novel prognostic indicator for ED patients.

摘要

引言

医院急诊科有时会遇到患者在到达时被评估为病情稳定,但随后却意外恶化的情况。欧登塞大学医院(OUH)进行了一项回顾性研究,以探讨能够在早期阶段检测出这些意外恶化病例的预后工具的可能性。该研究表明,人体核心部位与外周部位之间的温差(梯度)可用于检测这些病例。患者内眦(核心温度)与鼻尖(外周温度)之间的温度可用热成像仪进行测量。基于热图像的温度测量结果,可以计算出一个梯度值,该值可作为潜在病情恶化的早期指标。

问题

缺乏自动计算梯度的工具,阻碍了欧登塞大学医院急诊科对有病情恶化风险患者的早期指标进行全面的前瞻性研究。目前在热图像上进行面部地标检测的手动方法耗时过长,作为急诊科日常工作流程的一部分并不可行,因为护士必须在几分钟内对患者进行分诊。

目的

本研究的目的是通过开发一种手持预后工具来实现梯度计算过程的自动化,该工具可供护士在患者到达急诊科时,对其热图像自动进行面部地标检测。

方法

进行了一项系统的文献综述,以调查此前将计算机视觉方法应用于热图像的研究。与欧登塞大学医院急诊科进行了多次会议、访谈和实地研究,以了解其工作流程、制定需求并确定优先级,以及共同设计预后工具。

结果

该研究开发出了一款新颖安卓应用程序,它可以通过连接到智能手机的热成像仪拍摄患者面部的热图像。然后,该应用程序会在几秒钟内自动计算出用于分诊过程的梯度。所开发的工具是首个利用热图像上的面部地标检测来计算梯度的同类工具,该梯度可作为急诊科患者的一种新型预后指标。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/54a1/9137349/5d9314ab5bcf/frai-05-815333-g0001.jpg

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