Varrà Maria Olga, Conter Mauro, Recchia Matteo, Alborali Giovanni Loris, Maisano Antonio Marco, Ghidini Sergio, Zanardi Emanuela
Department of Food and Drug, University of Parma, Strada del Taglio 10, 43126 Parma, Italy.
Department of Veterinary Science, University of Parma, Strada del Taglio 10, 43126 Parma, Italy.
Vet Sci. 2024 Apr 18;11(4):181. doi: 10.3390/vetsci11040181.
Respiratory diseases significantly affect intensive pig farming, causing production losses and increased antimicrobial use. Accurate classification of lung lesions is crucial for effective diagnostics and disease management. The integration of non-destructive and rapid techniques would be beneficial to enhance overall efficiency in addressing these challenges. This study investigates the potential of near-infrared (NIR) spectroscopy in classifying pig lung tissues. The NIR spectra (908-1676 nm) of 101 lungs from weaned pigs were analyzed using a portable instrument and subjected to multivariate analysis. Two distinct discriminant models were developed to differentiate normal (N), congested (C), and pathological (P) lung tissues, as well as catarrhal bronchopneumonia (CBP), fibrinous pleuropneumonia (FPP), and interstitial pneumonia (IP) patterns. Overall, the model tailored for discriminating among pathological lesions demonstrated superior classification performances. Major challenges arose in categorizing C lungs, which exhibited a misclassification rate of 30% with N and P tissues, and FPP samples, with 30% incorrectly recognized as CBP samples. Conversely, IP and CBP lungs were all identified with accuracy, precision, and sensitivity higher than 90%. In conclusion, this study provides a promising proof of concept for using NIR spectroscopy to recognize and categorize pig lungs with different pathological lesions, offering prospects for efficient diagnostic strategies.
呼吸系统疾病严重影响集约化养猪业,导致生产损失并增加抗菌药物的使用。准确分类肺部病变对于有效的诊断和疾病管理至关重要。整合非破坏性和快速技术将有助于提高应对这些挑战的整体效率。本研究调查了近红外(NIR)光谱在猪肺组织分类中的潜力。使用便携式仪器分析了101头断奶仔猪肺部的近红外光谱(908 - 1676 nm),并进行了多变量分析。开发了两种不同的判别模型,以区分正常(N)、充血(C)和病理(P)肺组织,以及卡他性支气管肺炎(CBP)、纤维素性胸膜肺炎(FPP)和间质性肺炎(IP)模式。总体而言,针对病理病变鉴别定制的模型表现出卓越的分类性能。在对C类肺进行分类时出现了重大挑战,其与N和P组织的误分类率为30%,FPP样本中有30%被错误地识别为CBP样本。相反,IP和CBP类肺均以高于90%的准确度、精度和灵敏度被识别。总之,本研究为使用近红外光谱识别和分类具有不同病理病变的猪肺提供了一个有前景的概念验证,为高效诊断策略提供了前景。