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Detection of malaria parasites in dried human blood spots using mid-infrared spectroscopy and logistic regression analysis.
Mwanga, Emmanuel P; Minja, Elihaika G; Mrimi, Emmanuel; Jiménez, Mario González; Swai, Johnson K; Abbasi, Said; Ngowo, Halfan S; Siria, Doreen J; Mapua, Salum; Stica, Caleb; Maia, Marta F; Olotu, Ally; Sikulu-Lord, Maggy T; Baldini, Francesco; Ferguson, Heather M; Wynne, Klaas; Selvaraj, Prashanth; Babayan, Simon A; Okumu, Fredros O.
Affiliation
  • Mwanga EP; Environmental Health and Ecological Sciences Department, Ifakara Health Institute, Morogoro, Tanzania. emwanga@ihi.or.tz.
  • Minja EG; Environmental Health and Ecological Sciences Department, Ifakara Health Institute, Morogoro, Tanzania.
  • Mrimi E; Environmental Health and Ecological Sciences Department, Ifakara Health Institute, Morogoro, Tanzania.
  • Jiménez MG; School of Chemistry, University of Glasgow, Glasgow, G12 8QQ, UK.
  • Swai JK; Environmental Health and Ecological Sciences Department, Ifakara Health Institute, Morogoro, Tanzania.
  • Abbasi S; Environmental Health and Ecological Sciences Department, Ifakara Health Institute, Morogoro, Tanzania.
  • Ngowo HS; Environmental Health and Ecological Sciences Department, Ifakara Health Institute, Morogoro, Tanzania.
  • Siria DJ; Institute of Biodiversity, Animal Health and Comparative Medicine, University of Glasgow, Glasgow, G12 8QQ, UK.
  • Mapua S; Environmental Health and Ecological Sciences Department, Ifakara Health Institute, Morogoro, Tanzania.
  • Stica C; Environmental Health and Ecological Sciences Department, Ifakara Health Institute, Morogoro, Tanzania.
  • Maia MF; School of Life Sciences, University of Keele, Keele, Staffordshire, ST5 5BG, UK.
  • Olotu A; Environmental Health and Ecological Sciences Department, Ifakara Health Institute, Morogoro, Tanzania.
  • Sikulu-Lord MT; KEMRI Wellcome Trust Research Programme, P.O. Box 230, Kilifi, 80108, Kenya.
  • Baldini F; Centre for Tropical Medicine and Global Health, Nuffield Department of Medicine, University of Oxford, Old Road Campus Roosevelt Drive, Oxford, OX3 7FZ, UK.
  • Ferguson HM; KEMRI Wellcome Trust Research Programme, P.O. Box 230, Kilifi, 80108, Kenya.
  • Wynne K; Interventions and Clinical Trials Department, Ifakara Health Institute, Bagamoyo, Tanzania.
  • Selvaraj P; School of Public Health, University of Queensland, Saint Lucia, Australia.
  • Babayan SA; Department of Mathematics, Statistics and Computer Science, Marquette University, Wisconsin, USA.
  • Okumu FO; Institute of Biodiversity, Animal Health and Comparative Medicine, University of Glasgow, Glasgow, G12 8QQ, UK.
Malar J ; 18(1): 341, 2019 Oct 07.
Article in En | MEDLINE | ID: mdl-31590669
ABSTRACT

BACKGROUND:

Epidemiological surveys of malaria currently rely on microscopy, polymerase chain reaction assays (PCR) or rapid diagnostic test kits for Plasmodium infections (RDTs). This study investigated whether mid-infrared (MIR) spectroscopy coupled with supervised machine learning could constitute an alternative method for rapid malaria screening, directly from dried human blood spots.

METHODS:

Filter papers containing dried blood spots (DBS) were obtained from a cross-sectional malaria survey in 12 wards in southeastern Tanzania in 2018/19. The DBS were scanned using attenuated total reflection-Fourier Transform Infrared (ATR-FTIR) spectrometer to obtain high-resolution MIR spectra in the range 4000 cm-1 to 500 cm-1. The spectra were cleaned to compensate for atmospheric water vapour and CO2 interference bands and used to train different classification algorithms to distinguish between malaria-positive and malaria-negative DBS papers based on PCR test results as reference. The analysis considered 296 individuals, including 123 PCR-confirmed malaria positives and 173 negatives. Model training was done using 80% of the dataset, after which the best-fitting model was optimized by bootstrapping of 80/20 train/test-stratified splits. The trained models were evaluated by predicting Plasmodium falciparum positivity in the 20% validation set of DBS.

RESULTS:

Logistic regression was the best-performing model. Considering PCR as reference, the models attained overall accuracies of 92% for predicting P. falciparum infections (specificity = 91.7%; sensitivity = 92.8%) and 85% for predicting mixed infections of P. falciparum and Plasmodium ovale (specificity = 85%, sensitivity = 85%) in the field-collected specimen.

CONCLUSION:

These results demonstrate that mid-infrared spectroscopy coupled with supervised machine learning (MIR-ML) could be used to screen for malaria parasites in human DBS. The approach could have potential for rapid and high-throughput screening of Plasmodium in both non-clinical settings (e.g., field surveys) and clinical settings (diagnosis to aid case management). However, before the approach can be used, we need additional field validation in other study sites with different parasite populations, and in-depth evaluation of the biological basis of the MIR signals. Improving the classification algorithms, and model training on larger datasets could also improve specificity and sensitivity. The MIR-ML spectroscopy system is physically robust, low-cost, and requires minimum maintenance.
Subject(s)
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Plasmodium falciparum / Spectrophotometry, Infrared / Malaria, Falciparum / Dried Blood Spot Testing / Supervised Machine Learning Type of study: Diagnostic_studies / Prognostic_studies / Qualitative_research / Risk_factors_studies Limits: Humans Country/Region as subject: Africa Language: En Journal: Malar J Journal subject: MEDICINA TROPICAL Year: 2019 Type: Article Affiliation country: Tanzania

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Plasmodium falciparum / Spectrophotometry, Infrared / Malaria, Falciparum / Dried Blood Spot Testing / Supervised Machine Learning Type of study: Diagnostic_studies / Prognostic_studies / Qualitative_research / Risk_factors_studies Limits: Humans Country/Region as subject: Africa Language: En Journal: Malar J Journal subject: MEDICINA TROPICAL Year: 2019 Type: Article Affiliation country: Tanzania