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Improving Human Sperm Head Morphology Classification with Unsupervised Anatomical Feature Distillation

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arxiv 2202.07191 v3 pith:Q2YE3V2C submitted 2022-02-15 cs.CV cs.LG

Improving Human Sperm Head Morphology Classification with Unsupervised Anatomical Feature Distillation

classification cs.CV cs.LG
keywords spermheadmorphologyaccuracyachieveanatomicalclassificationdistillation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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With rising male infertility, sperm head morphology classification becomes critical for accurate and timely clinical diagnosis. Recent deep learning (DL) morphology analysis methods achieve promising benchmark results, but leave performance and robustness on the table by relying on limited and possibly noisy class labels. To address this, we introduce a new DL training framework that leverages anatomical and image priors from human sperm microscopy crops to extract useful features without additional labeling cost. Our core idea is to distill sperm head information with reliably-generated pseudo-masks and unsupervised spatial prediction tasks. The predicted foreground masks from this distillation step are then leveraged to regularize and reduce image and label noise in the tuning stage. We evaluate our new approach on two public sperm datasets and achieve state-of-the-art performances (e.g. 65.9% SCIAN accuracy and 96.5% HuSHeM accuracy).

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