School of the Environment, Faculty of Science, The University of Queensland, Brisbane, Queensland, Australia.
Department of Drug Evaluation, Australian Defence Force Malaria and Infectious Disease Institute, Brisbane, Queensland, Australia.
PLoS One. 2024 Mar 25;19(3):e0289232. doi: 10.1371/journal.pone.0289232. eCollection 2024.
Novel and highly sensitive point-of-care malaria diagnostic and surveillance tools that are rapid and affordable are urgently needed to support malaria control and elimination.
We demonstrated the potential of near-infrared spectroscopy (NIRS) technique to detect malaria parasites both, in vitro, using dilutions of infected red blood cells obtained from Plasmodium falciparum cultures and in vivo, in mice infected with P. berghei using blood spotted on slides and non-invasively, by simply scanning various body areas (e.g., feet, groin and ears). The spectra were analysed using machine learning to develop predictive models for infection.
Using NIRS spectra of in vitro cultures and machine learning algorithms, we successfully detected low densities (<10-7 parasites/μL) of P. falciparum parasites with a sensitivity of 96% (n = 1041), a specificity of 93% (n = 130) and an accuracy of 96% (n = 1171) and differentiated ring, trophozoite and schizont stages with an accuracy of 98% (n = 820). Furthermore, when the feet of mice infected with P. berghei with parasitaemia ≥3% were scanned non-invasively, the sensitivity and specificity of NIRS were 94% (n = 66) and 86% (n = 342), respectively.
These data highlights the potential of NIRS technique as rapid, non-invasive and affordable tool for surveillance of malaria cases. Further work to determine the potential of NIRS to detect malaria in symptomatic and asymptomatic malaria cases in the field is recommended including its capacity to guide current malaria elimination strategies.
迫切需要新型、高灵敏度的即时、经济实惠的床边疟疾诊断和监测工具,以支持疟疾控制和消除。
我们展示了近红外光谱(NIRS)技术在体外检测疟原虫的潜力,使用从恶性疟原虫培养物中获得的感染红细胞稀释液进行体外检测,以及在感染疟原虫的小鼠体内进行检测,通过在载玻片上点血或非侵入性地简单扫描各个身体部位(例如脚、腹股沟和耳朵)来进行检测。使用机器学习对光谱进行分析,以开发用于感染预测的模型。
使用体外培养物的 NIRS 光谱和机器学习算法,我们成功地以 96%的灵敏度(n = 1041)、93%的特异性(n = 130)和 96%的准确性(n = 1171)检测到低密度(<10-7 个寄生虫/μL)的恶性疟原虫寄生虫,并以 98%的准确性(n = 820)区分环状体、滋养体和裂殖体阶段。此外,当用 NIRS 非侵入性地扫描感染疟原虫的小鼠脚部时,NIRS 的灵敏度和特异性分别为 94%(n = 66)和 86%(n = 342)。
这些数据突出了 NIRS 技术作为快速、非侵入性和经济实惠的疟疾监测工具的潜力。建议进一步研究 NIRS 检测现场有症状和无症状疟疾病例的潜力,包括其指导当前疟疾消除策略的能力。