Abstract

Volatile organic compounds (VOCs) present in exhaled breath can help in analysing biochemical processes in the human body. Liver diseases can be traced using VOCs as biomarkers for physiological and pathophysiological conditions. In this work, we propose non-invasive and quick breath monitoring approach for early detection and progress monitoring of liver diseases using Isoprene, Limonene, and Dimethyl sulphide (DMS) as potential biomarkers. A pilot study is performed to design a dataset that includes the biomarkers concentration analysed from the breath sample before and after study subjects performed an exercise. A machine learning approach is applied for the prediction of scores for liver function diagnosis. Four regression methods are performed to predict the clinical scores using breath biomarkers data as features set by the machine learning techniques. A significant difference was observed for isoprene concentration (p < 0.01) and for DMS concentration (p < 0.0001) between liver patients and healthy subject’s breath sample. The R-square value between actual clinical score and predicted clinical score is found to be 0.78, 0.82, and 0.85 for CTP score, APRI score, and MELD score, respectively. Our results have shown a promising result with significant different breath profiles between liver patients and healthy volunteers. The use of machine learning for the prediction of scores is found very promising for use of breath biomarkers for liver function diagnosis.

Highlights

  • Volatile organic compounds (VOCs) present in exhaled breath can help in analysing biochemical processes in the human body

  • Our pilot study demonstrated that Isoprene, limonene and Dimethyl sulphide (DMS) can be potential biomarkers for liver disease

  • This study design involves an exercise in the breath collection protocol that includes healthy subjects and liver patients

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Summary

Introduction

Volatile organic compounds (VOCs) present in exhaled breath can help in analysing biochemical processes in the human body. A machine learning approach is applied for the prediction of scores for liver function diagnosis. Four regression methods are performed to predict the clinical scores using breath biomarkers data as features set by the machine learning techniques. The use of machine learning for the prediction of scores is found very promising for use of breath biomarkers for liver function diagnosis. The gold standard method for identifying the fibrosis stage is liver biopsy, it is an invasive test procedure with around 6% of patients found post ­complicacy[2] and bleeding ­issues[3]. After getting the required data from the clinical parameters from the blood test, it is possible to calculate Child–Pugh (CTP), AST to PLT ratio (APRI), and Model for End-Stage Liver Disease (MELD) clinical scores that help doctors determine the severity of the disease progression and predict the survival rate after disease. Breath is accessible in an adequately limitless stock, which gives more logical benefits than blood test procedures

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