Abstract

Purpose:Mitral valve repair is a complex minimally invasive surgery of the heart valve. In this context, suture detection from endoscopic images is a highly relevant task that provides quantitative information to analyse suturing patterns, assess prosthetic configurations and produce augmented reality visualisations. Facial or anatomical landmark detection tasks typically contain a fixed number of landmarks, and use regression or fixed heatmap-based approaches to localize the landmarks. However in endoscopy, there are a varying number of sutures in every image, and the sutures may occur at any location in the annulus, as they are not semantically unique.Method:In this work, we formulate the suture detection task as a multi-instance deep heatmap regression problem, to identify entry and exit points of sutures. We extend our previous work, and introduce the novel use of a 2D Gaussian layer followed by a differentiable 2D spatial Soft-Argmax layer to function as a local non-maximum suppression.Results:We present extensive experiments with multiple heatmap distribution functions and two variants of the proposed model. In the intra-operative domain, Variant 1 showed a mean F_1 of + 0.0422 over the baseline. Similarly, in the simulator domain, Variant 1 showed a mean F_1 of + 0.0865 over the baseline.Conclusion:The proposed model shows an improvement over the baseline in the intra-operative and the simulator domains. The data is made publicly available within the scope of the MICCAI AdaptOR2021 Challenge https://adaptor2021.github.io/, and the code at https://github.com/Cardio-AI/suture-detection-pytorch/.

Highlights

  • Mitral valve repair is a surgery of the mitral valve of the heart that seeks to restore its function by reconstructing the valvular tissue

  • We extend our previous work [24] and tackle the unbalanced multi-instance sparse-segmentation task through the use of a differentiable convolutional Soft-Argmax layer combined with a balanced loss function

  • Unlike other works [5,16] that use a Soft-Argmax layer to directly extract the landmarks from the heatmap from a single channel, we present its use as a form of local non-maximum suppression to filter out points with low likelihood of being a suture

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Summary

Introduction

Mitral valve repair is a surgery of the mitral valve of the heart that seeks to restore its function by reconstructing the valvular tissue. In this surgery, a prosthetic ring is affixed to the. The endoscopic data stream obtained during surgery or such simulations can be analysed in real time or retrospectively to extract quantitative information with regard to patient-valve geometry [21] or context-aware visualisations. Suture detection is one such task that can provide quantitative information.

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