Li Dan, Mathews Carol
Department of Health and Community Systems, School of Nursing, University of Pittsburgh, Pittsburgh, PA, USA.
Wound, Ostomy, Continence nurse clinician, Shadyside Hospital, University of Pittsburgh Medical Center, Pittsburgh, PA, USA.
J Clin Nurs. 2017 Nov;26(21-22):3564-3575. doi: 10.1111/jocn.13726. Epub 2017 Apr 3.
To develop an image processing algorithm to automatically measure pressure injuries using electronic pressure injury images stored in nursing documentation.
Photographing pressure injuries and storing the images in the electronic health record is standard practice in many hospitals. However, the manual measurement of pressure injury is time-consuming, challenging and subject to intra/inter-reader variability with complexities of the pressure injury and the clinical environment.
A cross-sectional algorithm development study.
A set of 32 pressure injury images were obtained from a western Pennsylvania hospital. First, we transformed the images from an RGB (i.e. red, green and blue) colour space to a YC C colour space to eliminate inferences from varying light conditions and skin colours. Second, a probability map, generated by a skin colour Gaussian model, guided the pressure injury segmentation process using the Support Vector Machine classifier. Third, after segmentation, the reference ruler - included in each of the images - enabled perspective transformation and determination of pressure injury size. Finally, two nurses independently measured those 32 pressure injury images, and intraclass correlation coefficient was calculated.
An image processing algorithm was developed to automatically measure the size of pressure injuries. Both inter- and intra-rater analysis achieved good level reliability.
Validation of the size measurement of the pressure injury (1) demonstrates that our image processing algorithm is a reliable approach to monitoring pressure injury progress through clinical pressure injury images and (2) offers new insight to pressure injury evaluation and documentation.
Once our algorithm is further developed, clinicians can be provided with an objective, reliable and efficient computational tool for segmentation and measurement of pressure injuries. With this, clinicians will be able to more effectively monitor the healing process of pressure injuries.
开发一种图像处理算法,利用护理文档中存储的电子压力性损伤图像自动测量压力性损伤。
拍摄压力性损伤并将图像存储在电子健康记录中是许多医院的标准做法。然而,手动测量压力性损伤既耗时又具有挑战性,并且由于压力性损伤和临床环境的复杂性,在不同读者之间存在内部/外部差异。
一项横断面算法开发研究。
从宾夕法尼亚州西部的一家医院获取了一组32张压力性损伤图像。首先,我们将图像从RGB(即红、绿、蓝)颜色空间转换为YC C颜色空间,以消除不同光照条件和肤色的影响。其次,由肤色高斯模型生成的概率图使用支持向量机分类器指导压力性损伤分割过程。第三,分割后,每张图像中包含的参考标尺用于透视变换和确定压力性损伤的大小。最后,两名护士独立测量这32张压力性损伤图像,并计算组内相关系数。
开发了一种图像处理算法来自动测量压力性损伤的大小。评分者间和评分者内分析均具有良好的可靠性。
压力性损伤大小测量的验证(1)表明我们的图像处理算法是一种通过临床压力性损伤图像监测压力性损伤进展的可靠方法,(2)为压力性损伤评估和记录提供了新的见解。
一旦我们的算法进一步开发,临床医生将能够获得一种用于压力性损伤分割和测量的客观、可靠且高效的计算工具。有了这个工具,临床医生将能够更有效地监测压力性损伤的愈合过程。