Potential of bacterial infection diagnosis using infrared spectroscopy of WBC and machine learning algorithms

Rapid identification of bacterial infection is very important and in many cases can save human life. Many pathogens can cause infections. While these infections share identical symptoms, the immune system responds differently to these pathogens. The current microbiology lab methods used to diagnose the infection type are time consuming (2-4 days). Thus, physicians may be tempted to start unnecessary antibiotic treatment, based on their wrong diagnosis (based on experience) of the infection. Uncontrolled use of antibiotics is the main driving force for the development of multi drug resistant bacteria which is considered a global health problem. We hypothesize that the different responses of the immune system to the infecting pathogens, cause some minute biochemical changes in the blood componentsthat can be detected by infrared spectroscopy which is known as a fast, accurate, sensitive and low cost method. In this study, we used infrared microscopy to measure the vibrational spectra of white blood cells (WBC) samples of 105 infected patients (69 bacterial and 36 with viral infection) and 90 controls (non-infected patients). The obtained spectra were analyzed using machine learning algorithms to identify the infection type as bacterial or viral in a time span of less than one hour after blood sample collection. Our study results showed that it is possible to determine the infection type with high success rates of 93% sensitivity and 85% specificity, based solely on WBC obtained from simple peripheral blood samples.

[1]  A. Carroll,et al.  Diagnosis and Management of an Initial UTI in Febrile Infants and Young Children , 2011, Pediatrics.

[2]  A. Salman,et al.  Early diagnosis of Alzheimer's disease using infrared spectroscopy of isolated blood samples followed by multivariate analyses. , 2017, The Analyst.

[3]  S. Mordechai,et al.  Pre-screening and follow-up of childhood acute leukemia using biochemical infrared analysis of peripheral blood mononuclear cells. , 2011, Biochimica et biophysica acta.

[4]  Adam H Agbaria,et al.  Differential Diagnosis of the Etiologies of Bacterial and Viral Infections Using Infrared Microscopy of Peripheral Human Blood Samples and Multivariate Analysis. , 2018, Analytical chemistry.

[5]  Stephen Whitaker,et al.  An Approach to Numerical Differentiation of Experimental Data , 1960 .

[6]  I. Bigio,et al.  Using Infrared Spectroscopy and Multivariate Analysis to Detect Antibiotics' Resistant Escherichia coli Bacteria. , 2017, Analytical chemistry.

[7]  Huan Liu,et al.  Chi2: feature selection and discretization of numeric attributes , 1995, Proceedings of 7th IEEE International Conference on Tools with Artificial Intelligence.

[8]  I. Bigio,et al.  Detection of antibiotic resistant Escherichia Coli bacteria using infrared microscopy and advanced multivariate analysis. , 2017, The Analyst.

[9]  Ilana Nisky,et al.  Detection of Cancer Using Advanced Computerized Analysis of Infrared Spectra of Peripheral Blood , 2013, IEEE Transactions on Biomedical Engineering.

[10]  Francis L Martin,et al.  Fourier-transform infrared spectroscopy coupled with a classification machine for the analysis of blood plasma or serum: a novel diagnostic approach for ovarian cancer. , 2013, The Analyst.

[11]  M. Banning Influenza: incidence, symptoms and treatment. , 2005, British journal of nursing.

[12]  M. Harper,et al.  Risk of serious bacterial infection in isolated and unsuspected neutropenia. , 2010, Academic Emergency Medicine.

[13]  Max Diem,et al.  Vibrational Spectroscopy for Medical Diagnosis , 2008 .

[14]  J. Hamilton,et al.  Evaluation of fever in infants and young children. , 2013, American family physician.

[15]  P. Martínez-Martín,et al.  Discrimination analysis of blood plasma associated with Alzheimer's disease using vibrational spectroscopy. , 2013, Journal of Alzheimer's disease : JAD.

[16]  K. Corace,et al.  Development and Validation of the HIV Medication Readiness Scale , 2007, Assessment.