Al-Shaebi Zakarya, Uysal Ciloglu Fatma, Nasser Mohammed, Aydin Omer
Department of Biomedical Engineering, Erciyes University, 38039 Kayseri, Turkey.
NanoThera Lab, Drug Application and Research Center (ERFARMA), Erciyes University, 38039 Kayseri, Turkey.
ACS Omega. 2022 Aug 12;7(33):29443-29451. doi: 10.1021/acsomega.2c03856. eCollection 2022 Aug 23.
Bacterial pathogens especially antibiotic-resistant ones are a public health concern worldwide. To oppose the morbidity and mortality associated with them, it is critical to select an appropriate antibiotic by performing a rapid bacterial diagnosis. Using a combination of Raman spectroscopy and deep learning algorithms to identify bacteria is a rapid and reliable method. Nevertheless, due to the loss of information during training a model, some deep learning algorithms suffer from low accuracy. Herein, we modify the U-Net architecture to fit our purpose of classifying the one-dimensional Raman spectra. The proposed U-Net model provides highly accurate identification of the 30 isolates of bacteria and yeast, empiric treatment groups, and antimicrobial resistance, thanks to its capability to concatenate and copy important features from the encoder layers to the decoder layers, thereby decreasing the data loss. The accuracies of the model for the 30-isolate level, empiric treatment level, and antimicrobial resistance level tasks are 86.3, 97.84, and 95%, respectively. The proposed deep learning model has a high potential for not only bacterial identification but also for other diagnostic purposes in the biomedical field.
细菌病原体,尤其是耐药性细菌,是全球公共卫生关注的问题。为了对抗与之相关的发病率和死亡率,通过快速进行细菌诊断来选择合适的抗生素至关重要。结合拉曼光谱和深度学习算法来识别细菌是一种快速且可靠的方法。然而,由于在训练模型过程中信息丢失,一些深度学习算法的准确率较低。在此,我们修改了U-Net架构以适应我们对一维拉曼光谱进行分类的目的。所提出的U-Net模型能够高度准确地识别30种细菌和酵母分离株、经验性治疗组以及抗菌耐药性,这得益于其将重要特征从编码器层连接并复制到解码器层的能力,从而减少了数据丢失。该模型在30分离株水平、经验性治疗水平和抗菌耐药性水平任务上的准确率分别为86.3%、97.84%和95%。所提出的深度学习模型不仅在细菌识别方面具有很高潜力,在生物医学领域的其他诊断目的方面也具有很高潜力。