Rapid assessment of the blood-feeding histories of wild-caught malaria mosquitoes using mid-infrared spectroscopy and machine learning

Author:

Mwanga Emmanuel P.,Mchola Idrisa S.,Makala Faraja E.,Mshani Issa H.,Siria Doreen J.,Mwinyi Sophia H.,Abbasi Said,Seleman Godian,Mgaya Jacqueline N.,Jiménez Mario González,Wynne Klaas,Sikulu-Lord Maggy T.,Selvaraj Prashanth,Okumu Fredros O.,Baldini Francesco,Babayan Simon A.

Abstract

Abstract Background The degree to which Anopheles mosquitoes prefer biting humans over other vertebrate hosts, i.e. the human blood index (HBI), is a crucial parameter for assessing malaria transmission risk. However, existing techniques for identifying mosquito blood meals are demanding in terms of time and effort, involve costly reagents, and are prone to inaccuracies due to factors such as cross-reactivity with other antigens or partially digested blood meals in the mosquito gut. This study demonstrates the first field application of mid-infrared spectroscopy and machine learning (MIRS-ML), to rapidly assess the blood-feeding histories of malaria vectors, with direct comparison to PCR assays. Methods and results Female Anopheles funestus mosquitoes (N = 1854) were collected from rural Tanzania and desiccated then scanned with an attenuated total reflectance Fourier-transform Infrared (ATR-FTIR) spectrometer. Blood meals were confirmed by PCR, establishing the ‘ground truth’ for machine learning algorithms. Logistic regression and multi-layer perceptron classifiers were employed to identify blood meal sources, achieving accuracies of 88%–90%, respectively, as well as HBI estimates aligning well with the PCR-based standard HBI. Conclusions This research provides evidence of MIRS-ML effectiveness in classifying blood meals in wild Anopheles funestus, as a potential complementary surveillance tool in settings where conventional molecular techniques are impractical. The cost-effectiveness, simplicity, and scalability of MIRS-ML, along with its generalizability, outweigh minor gaps in HBI estimation. Since this approach has already been demonstrated for measuring other entomological and parasitological indicators of malaria, the validation in this study broadens its range of use cases, positioning it as an integrated system for estimating pathogen transmission risk and evaluating the impact of interventions.

Funder

Wellcome Trust

Medical Research Council

Howard Hughes Medical Institute (HHMI)-Gates International Research Scholarship

Bill and Melinda Gates Foundation

The Academy Medical Sciences Springboard Award

Royal Society

Publisher

Springer Science and Business Media LLC

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