An autoencoder and artificial neural network-based method to estimate parity status of wild mosquitoes from near-infrared spectra.

Journal: PloS one
PMID:

Abstract

After mating, female mosquitoes need animal blood to develop their eggs. In the process of acquiring blood, they may acquire pathogens, which may cause different diseases in humans such as malaria, zika, dengue, and chikungunya. Therefore, knowing the parity status of mosquitoes is useful in control and evaluation of infectious diseases transmitted by mosquitoes, where parous mosquitoes are assumed to be potentially infectious. Ovary dissections, which are currently used to determine the parity status of mosquitoes, are very tedious and limited to few experts. An alternative to ovary dissections is near-infrared spectroscopy (NIRS), which can estimate the age in days and the infectious state of laboratory and semi-field reared mosquitoes with accuracies between 80 and 99%. No study has tested the accuracy of NIRS for estimating the parity status of wild mosquitoes. In this study, we train an artificial neural network (ANN) models on NIR spectra to estimate the parity status of wild mosquitoes. We use four different datasets: An. arabiensis collected from Minepa, Tanzania (Minepa-ARA); An. gambiae s.s collected from Muleba, Tanzania (Muleba-GA); An. gambiae s.s collected from Burkina Faso (Burkina-GA); and An.gambiae s.s from Muleba and Burkina Faso combined (Muleba-Burkina-GA). We train ANN models on datasets with spectra preprocessed according to previous protocols. We then use autoencoders to reduce the spectra feature dimensions from 1851 to 10 and re-train the ANN models. Before the autoencoder was applied, ANN models estimated parity status of mosquitoes in Minepa-ARA, Muleba-GA, Burkina-GA and Muleba-Burkina-GA with out-of-sample accuracies of 81.9±2.8 (N = 274), 68.7±4.8 (N = 43), 80.3±2.0 (N = 48), and 75.7±2.5 (N = 91), respectively. With the autoencoder, ANN models tested on out-of-sample data achieved 97.1±2.2% (N = 274), 89.8 ± 1.7% (N = 43), 93.3±1.2% (N = 48), and 92.7±1.8% (N = 91) accuracies for Minepa-ARA, Muleba-GA, Burkina-GA, and Muleba-Burkina-GA, respectively. These results show that a combination of an autoencoder and an ANN trained on NIR spectra to estimate the parity status of wild mosquitoes yields models that can be used as an alternative tool to estimate parity status of wild mosquitoes, especially since NIRS is a high-throughput, reagent-free, and simple-to-use technique compared to ovary dissections.

Authors

  • Masabho P Milali
    Ifakara Health Institute, Environmental Health and Ecological Sciences Thematic Group, Ifakara, Tanzania.
  • Samson S Kiware
    Ifakara Health Institute, Environmental Health and Ecological Sciences Thematic Group, Ifakara, Tanzania.
  • Nicodem J Govella
    Environmental Health and Ecological Sciences Thematic Group, Ifakara Health Institute, Ifakara, Tanzania.
  • Fredros Okumu
    Environmental Health and Ecological Sciences Thematic Group, Ifakara Health Institute, Ifakara, Tanzania.
  • Naveen Bansal
    Department of Mathematical and Statistical Sciences, Marquette University, Milwaukee, WI, United States of America.
  • Serdar Bozdag
    Department of Computer Science and Engineering, University of North Texas, Denton, TX, United States.
  • Jacques D Charlwood
    Liverpool School of Tropical Medicine, Liverpool, England, United Kingdom.
  • Marta F Maia
    KEMRI Wellcome Trust Research Programme, P.O. Box 230, Kilifi, 80108, Kenya.
  • Sheila B Ogoma
    Clinton Health Access Initiative, Nairobi, Kenya.
  • Floyd E Dowell
    USDA, Agricultural Research Service, Center for Grain and Animal Health Research, Manhattan, Kansas, United States of America.
  • George F Corliss
    Department of Electrical and Computer Engineering, Marquette University, Milwaukee, Wisconsin, United States of America.
  • Maggy T Sikulu-Lord
    Queensland Alliance of Agriculture and Food Innovation, The University of Queensland, Brisbane, Queensland, Australia.
  • Richard J Povinelli
    Electrical and Computer Engineering Department, Marquette University, Milwaukee, WI USA.