%0 Journal Article %T Rapid Mold Detection in Chinese Herbal Medicine Using Enhanced Deep Learning Technology. %A Zhu T %A Wu X %A Ma L %A Zeng Y %A Lian J %A Liu J %A Chen X %A Zhong L %A Chang J %A Hui G %J J Med Food %V 0 %N 0 %D 2024 Jun 26 %M 38919153 %F 2.542 %R 10.1089/jmf.2024.k.0004 %X Mold contamination poses a significant challenge in the processing and storage of Chinese herbal medicines (CHM), leading to quality degradation and reduced efficacy. To address this issue, we propose a rapid and accurate detection method for molds in CHM, with a specific focus on Atractylodes macrocephala, using electronic nose (e-nose) technology. The proposed method introduces an eccentric temporal convolutional network (ETCN) model, which effectively captures temporal and spatial information from the e-nose data, enabling efficient and precise mold detection in CHM. In our approach, we employ the stochastic resonance (SR) technique to eliminate noise from the raw e-nose data. By comprehensively analyzing data from eight sensors, the SR-enhanced ETCN (SR-ETCN) method achieves an impressive accuracy of 94.3%, outperforming seven other comparative models that use only the response time of 7.0 seconds before the rise phase. The experimental results showcase the ETCN model's accuracy and efficiency, providing a reliable solution for mold detection in Chinese herbal medicine. This study contributes significantly to expediting the assessment of herbal medicine quality, thereby helping to ensure the safety and efficacy of traditional medicinal practices.