School of Engineering, STEM College, RMIT University, 124 Latrobe Street, Melbourne, VIC, 3000, Australia.
Bolton Clarke Research Institute, Forest Hill, VIC, 3131, Australia.
Sci Rep. 2022 Oct 26;12(1):17962. doi: 10.1038/s41598-022-20835-y.
Early prediction of delayed healing for venous leg ulcers could improve management outcomes by enabling earlier initiation of adjuvant therapies. In this paper, we propose a framework for computerised prediction of healing for venous leg ulcers assessed in home settings using thermal images of the 0 week. Wound data of 56 older participants over 12 weeks were used for the study. Thermal images of the wounds were collected in their homes and labelled as healed or unhealed at the 12th week follow up. Textural information of the thermal images at week 0 was extracted. Thermal images of unhealed wounds had a higher variation of grey tones distribution. We demonstrated that the first three principal components of the textural features from one timepoint can be used as an input to a Bayesian neural network to discriminate between healed and unhealed wounds. Using the optimal Bayesian neural network, the classification results showed 78.57% sensitivity and 60.00% specificity. This non-contact method, incorporating machine learning, can provide a computerised prediction of this delay in the first assessment (week 0) in participants' homes compared to the current method that is able to do this in 3rd week and requires contact digital planimetry.
早期预测静脉性腿部溃疡的愈合延迟可以通过更早地开始辅助治疗来改善管理结果。在本文中,我们提出了一个使用第 0 周的热图像在家庭环境中评估静脉性腿部溃疡的计算机预测愈合的框架。该研究使用了 56 名年龄较大的参与者超过 12 周的伤口数据。在他们的家中收集了伤口的热图像,并在第 12 周的随访时标记为愈合或未愈合。提取了第 0 周热图像的纹理信息。未愈合伤口的热图像灰度分布变化较大。我们证明,来自一个时间点的纹理特征的前三个主成分可以用作贝叶斯神经网络的输入,以区分愈合和未愈合的伤口。使用最优贝叶斯神经网络,分类结果显示出 78.57%的灵敏度和 60.00%的特异性。与目前能够在第 3 周进行且需要接触式数字描记的方法相比,这种非接触式方法结合机器学习,可以在参与者家中的第 0 次评估(第 0 周)时提供这种延迟的计算机预测。