Selvaraj Bhuvaneswari, Rajasekar Elakkiya, Balaguru Rayappan John Bosco
Centre for Nanotechnology & Advanced Biomaterials (CeNTAB), SASTRA Deemed University, Thanjavur, Tamil Nadu 613 401, India.
School of Electrical & Electronics Engineering, SASTRA Deemed University, Thanjavur, Tamil Nadu 613 401, India.
ACS Omega. 2023 Dec 22;9(1):215-226. doi: 10.1021/acsomega.3c03755. eCollection 2024 Jan 9.
In recent days, the development of sensor-based medical devices has been found to be very effective for the prediction and analysis of the onset of diseases. The instigation of an electronic nose (eNose) device is profound and very useful in diverse applications. The analysis of exhaled breath biomarkers using eNose sensors has attained wider attention among researchers, and the prediction of multiple disease variants using the same is still an open research problem. In this work, an enhanced XGBooster classifier-based prediction mechanism was introduced to identify the disease variants based on the responses of commercially available metal oxide-based Figaro (Japan) sensors including TGS826, TGS822, TGS2600, and TGS2602. The implemented model secured 98.36% prediction accuracy in multiclass disease prediction and classification. The homemade one-dimensional metal oxide sensing elements such as ZnO, Cr-doped ZnO, and ZnO/NiO were integrated with the aforementioned sensor array for the specific detection of the three biomarkers of interest. This model has attained a classification accuracy of 99.77, 94.91, and 96.56% toward ammonia, ethanol, and acetone, respectively. And the multiclass disease biomarker classification accuracy of the readymade and homemade eNose prototype models was compared, and the results are summarized.
近年来,基于传感器的医疗设备的发展已被证明对疾病发作的预测和分析非常有效。电子鼻(eNose)设备的发明意义深远,在各种应用中非常有用。使用电子鼻传感器分析呼出气体生物标志物已引起研究人员的广泛关注,而使用该设备预测多种疾病变体仍是一个开放的研究问题。在这项工作中,引入了一种基于增强型XGBooster分类器的预测机制,以根据市售的基于金属氧化物的日本费加罗(Figaro)传感器(包括TGS826、TGS822、TGS2600和TGS2602)的响应来识别疾病变体。所实现的模型在多类疾病预测和分类中获得了98.36%的预测准确率。将自制的一维金属氧化物传感元件(如ZnO、Cr掺杂的ZnO和ZnO/NiO)与上述传感器阵列集成,用于特异性检测三种目标生物标志物。该模型对氨、乙醇和丙酮的分类准确率分别达到了99.77%、94.91%和96.56%。并比较了现成的和自制的电子鼻原型模型的多类疾病生物标志物分类准确率,并总结了结果。