Technol Health Care. 2022;30(S1):271-283. doi: 10.3233/THC-228026.
Tongue inspection is vital in traditional Chinese medicine. Fissured tongue is an important feature in tongue diagnosis, and primarily corresponds to three Chinese medicine syndromes: syndrome-related hotness, blood deficiency, and insufficiency of the spleen. Diagnosis of the syndrome is significantly affected by the experience of clinicians, and it is difficult for young doctors to perform accurate diagnoses.
The syndrome not only depends on the local features based on fissured regions but also on the global features of the whole tongue; therefore, a syndrome diagnosis framework combining the global and local features of a fissured tongue image was developed in the present study to achieve a quantitative and objective diagnosis.
First, we detected the fissured region of a tongue image using a single-shot multibox detector. Second, we extracted the global and local features from a whole tongue image and a fissured region using TongueNet (developed in-house). Third, we developed a classifier to determine the final syndrome.
Based on an experiment involving 721 fissured tongue images, we discovered that TongueNet affords better feature extraction. The accuracy of TongueNet was 4% (p< 0.05) and 3% (p< 0.05) higher than that of InceptionV3 and ResNet18, respectively, for whole tongue images. Meanwhile, at local fissured regions, the accuracy of TongueNet was 3% (p< 0.05) higher than that of InceptionV3 and equal to that of ResNet18. Finally, the fusion features outperformed the global and local features with a 78% accuracy.
Our findings indicate that TongueNet designed with batch normalization and dropout is more suitable for uncomplicated images than InceptionV3 and ResNet18. In addition, compared with the global features, the fusion features supplement the detailed information of the fissures and improve classification accuracy.
舌诊在中医中至关重要。裂纹舌是舌诊的重要特征,主要对应中医的三个证型:热证、血虚证和脾虚证。证型的诊断很大程度上取决于临床医生的经验,年轻医生难以进行准确诊断。
该证型不仅取决于基于裂纹区域的局部特征,还取决于整个舌象的全局特征;因此,本研究提出了一种将裂纹舌图像的全局和局部特征相结合的证型诊断框架,以实现定量和客观的诊断。
首先,我们使用单次多框检测器检测舌象的裂纹区域。其次,我们使用 TongueNet(内部开发)从整个舌象和裂纹区域提取全局和局部特征。最后,我们开发了一个分类器来确定最终的证型。
基于涉及 721 个裂纹舌图像的实验,我们发现 TongueNet 可提供更好的特征提取效果。TongueNet 在整个舌象上的准确率比 InceptionV3 和 ResNet18 分别高出 4%(p<0.05)和 3%(p<0.05),而在局部裂纹区域上,TongueNet 的准确率比 InceptionV3 高出 3%(p<0.05),与 ResNet18 持平。最后,融合特征的准确率为 78%,优于全局和局部特征。
我们的研究结果表明,与 InceptionV3 和 ResNet18 相比,TongueNet 设计时采用批量归一化和随机失活,更适合于简单图像。此外,与全局特征相比,融合特征补充了裂纹的详细信息,提高了分类准确性。