Abstract

Disease diagnosis through breath analysis has attracted significant attention in recent years due to its noninvasive nature, rapid testing ability, and applicability for patients of all ages. More than 1000 volatile organic components (VOCs) exist in human breath, but only selected VOCs are associated with specific diseases. Selective identification of those disease marker VOCs using an array of multiple sensors are highly desirable in the current scenario. The use of efficient sensors and the use of suitable classification algorithms is essential for the selective and reliable detection of those disease markers in complex breath. In the current study, we fabricated a noble metal (Au, Pd and Pt) nanoparticle-functionalized MoS2 (Chalcogenides, Sigma Aldrich, St. Louis, MO, USA)-based sensor array for the selective identification of different VOCs. Four sensors, i.e., pure MoS2, Au/MoS2, Pd/MoS2, and Pt/MoS2 were tested under exposure to different VOCs, such as acetone, benzene, ethanol, xylene, 2-propenol, methanol and toluene, at 50 °C. Initially, principal component analysis (PCA) and linear discriminant analysis (LDA) were used to discriminate those seven VOCs. As compared to the PCA, LDA was able to discriminate well between the seven VOCs. Four different machine learning algorithms such as k-nearest neighbors (kNN), decision tree, random forest, and multinomial logistic regression were used to further identify those VOCs. The classification accuracy of those seven VOCs using KNN, decision tree, random forest, and multinomial logistic regression was 97.14%, 92.43%, 84.1%, and 98.97%, respectively. These results authenticated that multinomial logistic regression performed best between the four machine learning algorithms to discriminate and differentiate the multiple VOCs that generally exist in human breath.

Highlights

  • In the field of medical diagnostic and health care systems, breath analysis has gained a lot of interest for the noninvasive detection of diseases and monitoring of health parameters [1,2]

  • The selective detection of the different volatile organic components (VOCs) using smart sensor systems has a high demand for efficient breath analysis

  • A suitable classifier is required to achieve an effective classification rate in VOC sensing based on the sensor data

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Summary

Introduction

In the field of medical diagnostic and health care systems, breath analysis has gained a lot of interest for the noninvasive detection of diseases and monitoring of health parameters [1,2]. More than 1000 volatile organic components (VOCs) are present in exhaled breath, but only some of them are considered disease markers [3,4] In this context, the selective detection of the different VOCs using smart sensor systems has a high demand for efficient breath analysis. A suitable classifier is required to achieve an effective classification rate in VOC sensing based on the sensor data. Different algorithms such as partial least squares discriminant analysis [14], canonical discriminant analysis [15], k-nearest neighbor [4,16], Discriminant function analysis [17], support vector machine [18], random forest [19], logistic regression [20], etc. Four different supervised algorithms, k-nearest neighbor (kNN), decision tree, random forest, and multinomial logistic regression, were implemented to identify the best-suited algorithm based on their performance

Preparation of MoS2 and Noble Metal Nanoparticles Solutions
Fabrication of Sensors
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