Busaranuvong Palawat, Agu Emmanuel, Kumar Deepak, Gautam Shefalika, Fard Reza Saadati, Tulu Bengisu, Strong Diane
Data Science DepartmentWorcester Polytechnic Institute Worcester MA 01609 USA.
Computer Science DepartmentWorcester Polytechnic Institute Worcester MA 01609 USA.
IEEE Open J Eng Med Biol. 2024 Sep 2;6:20-27. doi: 10.1109/OJEMB.2024.3453060. eCollection 2025.
To accurately detect infections in Diabetic Foot Ulcers (DFUs) using photographs taken at the Point of Care (POC). Achieving high performance is critical for preventing complications and amputations, as well as minimizing unnecessary emergency department visits and referrals. This paper proposes the Guided Conditional Diffusion Classifier (ConDiff). This novel deep-learning framework combines guided image synthesis with a denoising diffusion model and distance-based classification. The process involves (1) generating guided conditional synthetic images by injecting Gaussian noise to a guide (input) image, followed by denoising the noise-perturbed image through a reverse diffusion process, conditioned on infection status and (2) classifying infections based on the minimum Euclidean distance between synthesized images and the original guide image in embedding space. ConDiff demonstrated superior performance with an average accuracy of 81% that outperformed state-of-the-art (SOTA) models by at least 3%. It also achieved the highest sensitivity of 85.4%, which is crucial in clinical domains while significantly improving specificity to 74.4%, surpassing the best SOTA model. ConDiff not only improves the diagnosis of DFU infections but also pioneers the use of generative discriminative models for detailed medical image analysis, offering a promising approach for improving patient outcomes.
为了使用在护理点(POC)拍摄的照片准确检测糖尿病足溃疡(DFU)中的感染。实现高性能对于预防并发症和截肢,以及尽量减少不必要的急诊科就诊和转诊至关重要。本文提出了引导条件扩散分类器(ConDiff)。这个新颖的深度学习框架将引导图像合成与去噪扩散模型和基于距离的分类相结合。该过程包括:(1)通过向引导(输入)图像注入高斯噪声来生成引导条件合成图像,然后根据感染状态通过反向扩散过程对噪声干扰图像进行去噪;(2)基于嵌入空间中合成图像与原始引导图像之间的最小欧几里得距离对感染进行分类。ConDiff表现出卓越的性能,平均准确率为81%,比最先进的(SOTA)模型至少高出3%。它还实现了85.4%的最高灵敏度,这在临床领域至关重要,同时将特异性显著提高到74.4%,超过了最佳的SOTA模型。ConDiff不仅改善了DFU感染的诊断,还开创了使用生成判别模型进行详细医学图像分析的先河,为改善患者预后提供了一种有前景的方法。