LarvaeCountAI: a robust convolutional neural network-based tool for accurately counting the larvae of Culex annulirostris mosquitoes.

IF 2.1 3区 医学 Q2 PARASITOLOGY
Nouman Javed, Adam J López-Denman, Prasad N Paradkar, Asim Bhatti
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引用次数: 0

Abstract

Accurate counting of mosquito larval populations is essential for maintaining optimal conditions and population control within rearing facilities, assessing disease transmission risks, and implementing effective vector control measures. While existing methods for counting mosquito larvae have faced challenges such as the impact on larval mortality rate, multiple parameters adjustment and limitations in availability and affordability, recent advancements in artificial intelligence, particularly in AI-driven visual analysis, hold promise for addressing these issues. Here, we introduce LarvaeCountAI, an open-source convolutional neural network (CNN)-based tool designed to automatically count Culex annulirostris mosquito larvae from videos captured in laboratory environments. LarvaeCountAI does not require videos to be recorded using an advanced setup; it can count larvae with high accuracy from videos captured using a simple setup mainly consisting of a camera and commonly used plastic trays. Using the videos enables LarvaeCountAI to capitalise on the continuous movement of larvae, enhancing the likelihood of accurately counting a greater number of larvae. LarvaeCountAI adopts a non-invasive approach, where larvae are simply placed in trays and imaged, minimising any potential impact on larval mortality. This approach addresses the limitations associated with previous methods involving mechanical machines, which often increase the risk of larval mortality as larvae pass through multiple sections for counting purposes. The performance of LarvaeCountAI was tested using 10 video samples. Validation results demonstrated the excellent performance of LarvaeCountAI, with an accuracy ranging from 96.25 % to 99.13 % across 10 test videos and an average accuracy of 97.88 %. LarvaeCountAI represents a remarkable advancement in mosquito surveillance technology, offering a robust and efficient solution for monitoring larval populations. LarvaeCountAI can contribute to developing effective strategies for reducing disease transmission and safeguarding public health by providing timely and accurate data on mosquito larvae abundance.

LarvaeCountAI:基于卷积神经网络的鲁棒工具,用于精确计算环纹库蚊的幼虫数量。
蚊子幼虫数量的精确计数对于保持饲养设施内的最佳条件和数量控制、评估疾病传播风险以及实施有效的病媒控制措施至关重要。虽然现有的蚊子幼虫计数方法面临着一些挑战,如对幼虫死亡率的影响、多参数调整以及可用性和可负担性的限制,但最近人工智能的进步,特别是人工智能驱动的可视化分析,为解决这些问题带来了希望。在此,我们介绍 LarvaeCountAI,这是一种基于卷积神经网络(CNN)的开源工具,旨在从实验室环境中捕获的视频中自动计数库蚊幼虫。LarvaeCountAI 不需要使用高级设置来录制视频;它可以从主要由摄像头和常用塑料托盘组成的简单设置所捕获的视频中对幼虫进行高精度计数。通过视频,LarvaeCountAI 可以利用幼虫的连续运动,提高准确计数更多幼虫的可能性。LarvaeCountAI 采用非侵入式方法,只需将幼虫放入托盘中并进行成像,从而最大限度地降低了对幼虫死亡率的潜在影响。这种方法解决了以往使用机械设备的方法的局限性,因为机械设备往往会增加幼虫死亡的风险,因为幼虫会通过多个部分进行计数。使用 10 个视频样本对 LarvaeCountAI 的性能进行了测试。验证结果表明 LarvaeCountAI 性能卓越,10 个测试视频的准确率从 96.25% 到 99.13%,平均准确率为 97.88%。LarvaeCountAI 代表了蚊虫监测技术的显著进步,为监测幼虫种群提供了强大而高效的解决方案。LarvaeCountAI 能够提供及时准确的蚊子幼虫数量数据,有助于制定有效的战略,减少疾病传播,保障公众健康。
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来源期刊
Acta tropica
Acta tropica 医学-寄生虫学
CiteScore
5.40
自引率
11.10%
发文量
383
审稿时长
37 days
期刊介绍: Acta Tropica, is an international journal on infectious diseases that covers public health sciences and biomedical research with particular emphasis on topics relevant to human and animal health in the tropics and the subtropics.
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