CVJun 22, 2017

Fast Estimation of Haemoglobin Concentration in Tissue Via Wavelet Decomposition

arXiv:1706.07263v13 citations
Originality Incremental advance
AI Analysis

This enables real-time assessment of tissue perfusion and oxygen saturation in surgery, but is incremental as it adapts existing techniques to RGB imaging for speed.

The paper tackles the problem of estimating hemoglobin concentration in tissue during minimally invasive surgery by developing a fast method using RGB images for multispectral imaging, achieving a frame rate of approximately 15Hz on GPU implementation.

Tissue oxygenation and perfusion can be an indicator for organ viability during minimally invasive surgery, for example allowing real-time assessment of tissue perfusion and oxygen saturation. Multispectral imaging is an optical modality that can inspect tissue perfusion in wide field images without contact. In this paper, we present a novel, fast method for using RGB images for MSI, which while limiting the spectral resolution of the modality allows normal laparoscopic systems to be used. We exploit the discrete Haar decomposition to separate individual video frames into low pass and directional coefficients and we utilise a different multispectral estimation technique on each. The increase in speed is achieved by using fast Tikhonov regularisation on the directional coefficients and more accurate Bayesian estimation on the low pass component. The pipeline is implemented using a graphics processing unit (GPU) architecture and achieves a frame rate of approximately 15Hz. We validate the method on animal models and on human data captured using a da Vinci stereo laparoscope.

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