Improvement of clinical wound microcirculation diagnosis using an object tracking-based laser speckle contrast imaging system.
Meng-Che HsiehChia-Yu ChangChing-Han HsuYan-Ren LinPei-You HsiehCongo Tak-Shing ChingLun-De LiaoPublished in: APL bioengineering (2024)
Wound monitoring is crucial for effective healing, as nonhealing wounds can lead to tissue ulceration and necrosis. Evaluating wound recovery involves observing changes in angiogenesis. Laser speckle contrast imaging (LSCI) is vital for wound assessment due to its rapid imaging, high resolution, wide coverage, and noncontact properties. When using LSCI equipment, regions of interest (ROIs) must be delineated in lesion areas in images for quantitative analysis. However, patients with serious wounds cannot maintain constant postures because the affected areas are often associated with discomfort and pain. This leads to deviations between the drawn ROI and actual wound position when using LSCI for wound assessment, affecting the reliability of relevant assessments. To address these issues, we used the channel and spatial reliability tracker object tracking algorithm to develop an automatic ROI tracking function for LSCI systems. This algorithm is used to track and correct artificial movements in blood flow images, address the ROI position offset caused by the movement of the affected body part, increase the blood flow analysis accuracy, and improve the clinical applicability of LSCI systems. ROI tracking experiments were performed by simulating wounds, and the results showed that the intraclass correlation coefficient (ICC) ranged from 0.134 to 0.976. Furthermore, the object within the ROI affected tracking performance. Clinical assessments across wound types showed ICCs ranging from 0.798 to 0.917 for acute wounds and 0.628-0.849 for chronic wounds. We also discuss factors affecting tracking performance and propose strategies to enhance implementation effectiveness.
Keyphrases
- blood flow
- wound healing
- high resolution
- deep learning
- surgical site infection
- machine learning
- healthcare
- primary care
- magnetic resonance
- randomized controlled trial
- intensive care unit
- optical coherence tomography
- chronic pain
- convolutional neural network
- high speed
- neural network
- spinal cord injury
- hepatitis b virus
- pain management
- affordable care act
- sensitive detection
- health insurance
- aortic dissection
- quantum dots