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基于移动设备深度学习的全自动伤口组织分割:队列研究。

Fully Automated Wound Tissue Segmentation Using Deep Learning on Mobile Devices: Cohort Study.

机构信息

Swift Medical Inc, Toronto, ON, Canada.

Department of Surgery, Universidad Autonoma de San Luis Potosi, San Luis Potosi, Mexico.

出版信息

JMIR Mhealth Uhealth. 2022 Apr 22;10(4):e36977. doi: 10.2196/36977.

Abstract

BACKGROUND

Composition of tissue types within a wound is a useful indicator of its healing progression. Tissue composition is clinically used in wound healing tools (eg, Bates-Jensen Wound Assessment Tool) to assess risk and recommend treatment. However, wound tissue identification and the estimation of their relative composition is highly subjective. Consequently, incorrect assessments could be reported, leading to downstream impacts including inappropriate dressing selection, failure to identify wounds at risk of not healing, or failure to make appropriate referrals to specialists.

OBJECTIVE

This study aimed to measure inter- and intrarater variability in manual tissue segmentation and quantification among a cohort of wound care clinicians and determine if an objective assessment of tissue types (ie, size and amount) can be achieved using deep neural networks.

METHODS

A data set of 58 anonymized wound images of various types of chronic wounds from Swift Medical's Wound Database was used to conduct the inter- and intrarater agreement study. The data set was split into 3 subsets with 50% overlap between subsets to measure intrarater agreement. In this study, 4 different tissue types (epithelial, granulation, slough, and eschar) within the wound bed were independently labeled by the 5 wound clinicians at 1-week intervals using a browser-based image annotation tool. In addition, 2 deep convolutional neural network architectures were developed for wound segmentation and tissue segmentation and were used in sequence in the workflow. These models were trained using 465,187 and 17,000 image-label pairs, respectively. This is the largest and most diverse reported data set used for training deep learning models for wound and wound tissue segmentation. The resulting models offer robust performance in diverse imaging conditions, are unbiased toward skin tones, and could execute in near real time on mobile devices.

RESULTS

A poor to moderate interrater agreement in identifying tissue types in chronic wound images was reported. A very poor Krippendorff α value of .014 for interrater variability when identifying epithelization was observed, whereas granulation was most consistently identified by the clinicians. The intrarater intraclass correlation (3,1), however, indicates that raters were relatively consistent when labeling the same image multiple times over a period. Our deep learning models achieved a mean intersection over union of 0.8644 and 0.7192 for wound and tissue segmentation, respectively. A cohort of wound clinicians, by consensus, rated 91% (53/58) of the tissue segmentation results to be between fair and good in terms of tissue identification and segmentation quality.

CONCLUSIONS

The interrater agreement study validates that clinicians exhibit considerable variability when identifying and visually estimating wound tissue proportion. The proposed deep learning technique provides objective tissue identification and measurements to assist clinicians in documenting the wound more accurately and could have a significant impact on wound care when deployed at scale.

摘要

背景

伤口组织类型的组成是其愈合进展的有用指标。组织成分在临床上用于伤口愈合工具(例如,Bates-Jensen 伤口评估工具)中,以评估风险并推荐治疗方法。然而,伤口组织的识别和相对组成的估计是高度主观的。因此,可能会报告不正确的评估结果,导致下游影响,包括选择不当的敷料、未能识别有愈合风险的伤口,或未能向专家进行适当转诊。

目的

本研究旨在测量一组伤口护理临床医生在手动组织分割和定量方面的组内和组间变异性,并确定是否可以使用深度神经网络对组织类型(即大小和数量)进行客观评估。

方法

使用 Swift Medical 的 Wound Database 中的各种慢性伤口的 58 张匿名伤口图像数据集进行组内和组间一致性研究。该数据集分为 3 个子集,子集之间有 50%的重叠,以测量组内一致性。在这项研究中,5 位伤口临床医生在 1 周的间隔内使用基于浏览器的图像注释工具独立标记伤口床中的 4 种不同组织类型(上皮、肉芽、坏死组织和焦痂)。此外,还开发了 2 种用于伤口分割和组织分割的深度卷积神经网络架构,并在工作流程中依次使用。这些模型分别使用 465,187 对和 17,000 对图像-标签对进行训练。这是报告的用于训练伤口和伤口组织分割的深度学习模型的最大和最多样化的数据集。生成的模型在各种成像条件下具有稳健的性能,对肤色没有偏见,并且可以在移动设备上近乎实时执行。

结果

报告了在识别慢性伤口图像中的组织类型方面存在较差到中等的组间一致性。当识别上皮化时,观察到组间变异性的 Krippendorff α 值非常低,为.014,而肉芽组织最常被临床医生识别。然而,评分者在一段时间内多次标记同一图像时的组内内类相关系数(3,1)表明他们相对一致。我们的深度学习模型在伤口和组织分割方面的平均交并率分别为 0.8644 和 0.7192。一组伤口临床医生一致认为,在组织识别和分割质量方面,91%(53/58)的组织分割结果处于良好和良好之间。

结论

组间一致性研究验证了临床医生在识别和直观估计伤口组织比例方面存在很大的差异。所提出的深度学习技术提供了客观的组织识别和测量,以帮助临床医生更准确地记录伤口,并在大规模部署时对伤口护理产生重大影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e478/9077502/97c1a5a090a9/mhealth_v10i4e36977_fig1.jpg

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