Abstract

Accurate and timely pregnancy diagnosis is an important component of effective herd management in dairy cattle. Predicting pregnancy from Fourier-transform mid-infrared (FT-MIR) spectroscopy data is of particular interest because the data are often already available from routine milk testing. The purpose of this study was to evaluate how well pregnancy status could be predicted in a large data set of 1,161,436 FT-MIR milk spectra records from 863,982 mixed-breed pasture-based New Zealand dairy cattle managed within seasonal calving systems. Three strategies were assessed for defining the nonpregnant cows when partitioning the records according to pregnancy status in the training population. Two of these used records for cows with a subsequent calving only, whereas the third also included records for cows without a subsequent calving. For each partitioning strategy, partial least squares discriminant analysis models were developed, whereby spectra from all the cows in 80% of herds were used to train the models, and predictions on cows in the remaining herds were used for validation. A separate data set was also used as a secondary validation, whereby pregnancy diagnosis had been assigned according to the presence of pregnancy-associated glycoproteins (PAG) in the milk samples. We examined different ways of accounting for stage of lactation in the prediction models, either by including it as an effect in the prediction model, or by pre-adjusting spectra before fitting the model. For a subset of strategies, we also assessed prediction accuracies from deep learning approaches, utilizing either the raw spectra or images of spectra. Across all strategies, prediction accuracies were highest for models using the unadjusted spectra as model predictors. Strategies for cows with a subsequent calving performed well in herd-independent validation with sensitivities above 0.79, specificities above 0.91 and area under the receiver operating characteristic curve (AUC) values over 0.91. However, for these strategies, the specificity to predict nonpregnant cows in the external PAG data set was poor (0.002-0.04). The best performing models were those that included records for cows without a subsequent calving, and used unadjusted spectra and days in milk as predictors, with consistent results observed across the training, herd-independent validation and PAG data sets. For the partial least squares discriminant analysis model, sensitivity was 0.71, specificity was 0.54 and AUC values were 0.68 in the PAG data set; and for an image-based deep learning model, the sensitivity was 0.74, specificity was 0.52 and the AUC value was 0.69. Our results demonstrate that in pasture-based seasonal calving herds, confounding between pregnancy status and spectral changes associated with stage of lactation can inflate prediction accuracies. When the effect of this confounding was reduced, prediction accuracies were not sufficiently high enough to use as a sole indicator of pregnancy status.

Highlights

  • Knowledge of pregnancy status for dairy cattle is an important component of an efficient and productive herd management system

  • Pregnancy status during the mating period is crudely determined by nonreturn to estrus, and later in lactation is ascertained by indirect methods such as Tiplady et al.: PREDICTING PREGNANCY FROM MID-INFRARED SPECTRA

  • We examine the impact of different ways of accounting for the effect of stage of lactation in these models, either by including days in milk as a model predictor, or by preadjusting the spectra for DIM; and for a subset of models, we compare prediction accuracies from partial least squares discriminant analysis (PLS-DA) models to those from alternative models developed using deep learning approaches

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Summary

Introduction

Knowledge of pregnancy status for dairy cattle is an important component of an efficient and productive herd management system. Direct pregnancy testing is costly and may require additional animal-handling, and detection of pregnancy status based only on nonreturn to estrus is unreliable unless estrus detection monitoring and recording is of a high standard. In instances of embryonic loss after initial pregnancy establishment, nonpregnant cows may not all return to estrus due to the extended presence of a corpus luteum (Ricci et al, 2017). For these reasons, a methodology for determining pregnancy status using Fourier-transform midinfrared (FT-MIR) spectroscopy is of interest, because the data are often already available from routine milk testing at 30- or 60-d intervals

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