Scare J A, Slusarewicz P, Noel M L, Wielgus K M, Nielsen M K
M.H. Gluck Equine Research Center, Department of Veterinary Science, University of Kentucky, Lexington, KY, USA.
M.H. Gluck Equine Research Center, Department of Veterinary Science, University of Kentucky, Lexington, KY, USA; MEP Equine Solutions, 3905 English Oak Circle, Lexington, KY 40514, USA.
Vet Parasitol. 2017 Nov 30;247:85-92. doi: 10.1016/j.vetpar.2017.10.005. Epub 2017 Oct 12.
Fecal egg counts are emphasized for guiding equine helminth parasite control regimens due to the rise of anthelmintic resistance. This, however, poses further challenges, since egg counting results are prone to issues such as operator dependency, method variability, equipment requirements, and time commitment. The use of image analysis software for performing fecal egg counts is promoted in recent studies to reduce the operator dependency associated with manual counts. In an attempt to remove operator dependency associated with current methods, we developed a diagnostic system that utilizes a smartphone and employs image analysis to generate automated egg counts. The aims of this study were (1) to determine precision of the first smartphone prototype, the modified McMaster and ImageJ; (2) to determine precision, accuracy, sensitivity, and specificity of the second smartphone prototype, the modified McMaster, and Mini-FLOTAC techniques. Repeated counts on fecal samples naturally infected with equine strongyle eggs were performed using each technique to evaluate precision. Triplicate counts on 36 egg count negative samples and 36 samples spiked with strongyle eggs at 5, 50, 500, and 1000 eggs per gram were performed using a second smartphone system prototype, Mini-FLOTAC, and McMaster to determine technique accuracy. Precision across the techniques was evaluated using the coefficient of variation. In regards to the first aim of the study, the McMaster technique performed with significantly less variance than the first smartphone prototype and ImageJ (p<0.0001). The smartphone and ImageJ performed with equal variance. In regards to the second aim of the study, the second smartphone system prototype had significantly better precision than the McMaster (p<0.0001) and Mini-FLOTAC (p<0.0001) methods, and the Mini-FLOTAC was significantly more precise than the McMaster (p=0.0228). Mean accuracies for the Mini-FLOTAC, McMaster, and smartphone system were 64.51%, 21.67%, and 32.53%, respectively. The Mini-FLOTAC was significantly more accurate than the McMaster (p<0.0001) and the smartphone system (p<0.0001), while the smartphone and McMaster counts did not have statistically different accuracies. Overall, the smartphone system compared favorably to manual methods with regards to precision, and reasonably with regards to accuracy. With further refinement, this system could become useful in veterinary practice.
由于抗蠕虫药耐药性的增加,粪便虫卵计数在指导马寄生虫控制方案中受到重视。然而,这带来了进一步的挑战,因为虫卵计数结果容易出现诸如操作人员依赖性、方法变异性、设备要求和时间投入等问题。最近的研究提倡使用图像分析软件进行粪便虫卵计数,以减少与手工计数相关的操作人员依赖性。为了消除与当前方法相关的操作人员依赖性,我们开发了一种诊断系统,该系统利用智能手机并采用图像分析来生成自动虫卵计数。本研究的目的是:(1)确定第一代智能手机原型、改良麦克马斯特法和ImageJ软件的精密度;(2)确定第二代智能手机原型、改良麦克马斯特法和Mini-FLOTAC技术的精密度、准确性、敏感性和特异性。使用每种技术对自然感染马圆线虫卵的粪便样本进行重复计数以评估精密度。使用第二代智能手机系统原型、Mini-FLOTAC和麦克马斯特法对36份虫卵计数阴性样本以及每克分别添加5、50、500和1000个圆线虫卵的36份样本进行一式三份计数,以确定技术准确性。使用变异系数评估各技术的精密度。关于本研究的第一个目的,麦克马斯特法的变异显著小于第一代智能手机原型和ImageJ软件(p<0.0001)。智能手机和ImageJ软件的变异相同。关于本研究的第二个目的,第二代智能手机系统原型的精密度显著优于麦克马斯特法(p<0.0001)和Mini-FLOTAC技术(p<0.0001),且Mini-FLOTAC技术的精密度显著高于麦克马斯特法(p=0.0228)。Mini-FLOTAC、麦克马斯特法和智能手机系统的平均准确率分别为64.51%、21.67%和32.53%。Mini-FLOTAC的准确率显著高于麦克马斯特法(p<0.0001)和智能手机系统(p<0.0001),而智能手机和麦克马斯特法的计数准确率在统计学上没有差异。总体而言,智能手机系统在精密度方面优于手工方法,在准确性方面也较为合理。经过进一步改进,该系统可能会在兽医实践中发挥作用。