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Burn wound classification model using spatial frequency-domain imaging and machine learning

机译:使用空间频域成像和机器学习的烧伤创面分类模型

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摘要

Accurate assessment of burn severity is critical for wound care and the course of treatment. Delays in classification translate to delays in burn management, increasing the risk of scarring and infection. To this end, numerous imaging techniques have been used to examine tissue properties to infer burn severity. Spatial frequency-domain imaging (SFDI) has also been used to characterize burns based on the relationships between histologic observations and changes in tissue properties. Recently, machine learning has been used to classify burns by combining optical features from multispectral or hyperspectral imaging. Rather than employ models of light propagation to deduce tissue optical properties, we investigated the feasibility of using SFDI reflectance data at multiple spatial frequencies, with a support vector machine (SVM) classifier, to predict severity in a porcine model of graded burns. Calibrated reflectance images were collected using SFDI at eight wavelengths (471 to 851 nm) and five spatial frequencies (0 to ). Three models were built from subsets of this initial dataset. The first subset included data taken at all wavelengths with the planar ( ) spatial frequency, the second comprised data at all wavelengths and spatial frequencies, and the third used all collected data at values relative to unburned tissue. These data subsets were used to train and test cubic SVM models, and compared against burn status 28 days after injury. Model accuracy was established through leave-one-out cross-validation testing. The model based on images obtained at all wavelengths and spatial frequencies predicted burn severity at 24 h with 92.5% accuracy. The model composed of all values relative to unburned skin was 94.4% accurate. By comparison, the model that employed only planar illumination was 88.8% accurate. This investigation suggests that the combination of SFDI with machine learning has potential for accurately predicting burn severity.
机译:准确评估烧伤严重程度对于伤口护理和治疗过程至关重要。分类的延迟会导致烧伤处理的延迟,增加疤痕和感染的风险。为此,已经使用了许多成像技术来检查组织特性以推断烧伤的严重程度。基于组织学观察结果与组织特性变化之间的关系,空间频域成像(SFDI)也已用于表征烧伤。近来,机器学习已被用于通过组合多光谱或高光谱成像的光学特征对燃烧进行分类。我们没有使用光传播模型来推断组织的光学特性,而是调查了在支持向量机(SVM)分类器中使用多个空间频率的SFDI反射率数据来预测猪在分级烧伤模型中的严重性的可行性。使用SFDI在8个波长(471至851nm)和5个空间频率(0至)下收集校准的反射率图像。从此初始数据集的子集构建了三个模型。第一个子集包含在所有具有平面()空间频率的波长下获取的数据,第二个子集包含在所有波长和空间频率下的数据,第三个子集使用相对于未烧伤组织的所有收集数据。这些数据子集用于训练和测试立方SVM模型,并在受伤后28天与烧伤状态进行比较。模型准确性是通过留一法交叉验证测试确定的。该模型基于在所有波长和空间频率下获得的图像,预测了24h时的烧伤严重程度,准确度为92.5%。由与未烧伤皮肤有关的所有值组成的模型准确率为94.4%。相比之下,仅采用平面照明的模型的准确度为88.8%。这项研究表明,SFDI与机器学习的结合具有准确预测烧伤严重程度的潜力。

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