Piochi Maria, Monteleone Erminio, Torri Luisa, Masi Camilla, Almli Valérie Lengard, Wold Jens Petter, Dinnella Caterina
GESAAF, University of Florence, Via Donizetti, 6, 50144 Florence, Italy.
University of Gastronomic Sciences, Piazza Vittorio Emanuele 9, 12060 Bra, CN, Italy.
Chem Senses. 2017 Sep 1;42(7):553-561. doi: 10.1093/chemse/bjx035.
The density of fungiform papillae (FPD) on the human tongue is currently taken as index for responsiveness to oral chemosensory stimuli. Visual analysis of digital tongue picture and manual counting by trained operators represents the most popular technique for FPD assessment. Methodological issues mainly due to operator bias are considered among factors accounting for the uncertainty about the relationships between FPD and responsiveness to chemosensory stimuli. The present study describes a novel automated method to count fungiform papillae (FP) from image analysis of tongue pictures. The method was applied to tongue pictures from 133 subjects. Taking the manual count as reference method, a partial least squares regression model was developed to predict FPD from tongue automated analysis output. FPD from manual and automated count showed the same normal distribution and comparable descriptive statistic values. Consistent subject classifications as low and high FPD were obtained according to the median values from manual and automated count. The same results on the effect of FPD variation on taste perception were obtained both using predicted and counted values. The proposed method overcomes count uncertainties due to researcher bias in manual counting and is suited for large population studies. Additional information is provided such as FP size class distribution which would help for a better understanding of the relationships between FPD variation and taste functions.
人类舌头上菌状乳头的密度(FPD)目前被用作对口腔化学感觉刺激反应性的指标。对数字舌图像进行视觉分析并由训练有素的操作人员进行人工计数,是评估FPD最常用的技术。在解释FPD与化学感觉刺激反应性之间关系存在不确定性的因素中,主要由操作人员偏差导致的方法学问题被考虑在内。本研究描述了一种通过对舌图像进行图像分析来计数菌状乳头(FP)的新型自动化方法。该方法应用于133名受试者的舌图像。以人工计数作为参考方法,建立了一个偏最小二乘回归模型,用于根据舌自动分析输出预测FPD。人工计数和自动计数得到的FPD显示出相同的正态分布和可比的描述性统计值。根据人工计数和自动计数的中位数,获得了一致的低FPD和高FPD受试者分类。使用预测值和计数值在FPD变化对味觉感知的影响方面得到了相同的结果。所提出的方法克服了人工计数中由于研究人员偏差导致的计数不确定性,适用于大规模人群研究。还提供了诸如FP大小类别分布等额外信息,这将有助于更好地理解FPD变化与味觉功能之间的关系。