Wavelet-based multifractal analysis of laser biopsy imagery
Jaidip Jagtap, Sayantan Ghosh, Prasanta K. Panigrahi, Asima Pradhan

TL;DR
This study applies wavelet-based multifractal analysis to laser biopsy images of cervical tissues to quantify morphological changes during cancer progression, potentially enabling non-invasive cancer detection.
Contribution
It introduces a novel wavelet-based multifractal method for analyzing laser biopsy images to differentiate cancer stages based on optical property changes.
Findings
Hurst exponent decreases with cancer progression
Wavelet analysis effectively characterizes tissue morphological changes
Potential for non-invasive cancer staging
Abstract
In this work, we report a wavelet based multi-fractal study of images of dysplastic and neoplastic HE- stained human cervical tissues captured in the transmission mode when illuminated by a laser light (He-Ne 632.8nm laser). It is well known that the morphological changes occurring during the progression of diseases like cancer manifest in their optical properties which can be probed for differentiating the various stages of cancer. Here, we use the multi-resolution properties of the wavelet transform to analyze the optical changes. For this, we have used a novel laser imagery technique which provides us with a composite image of the absorption by the different cellular organelles. As the disease progresses, due to the growth of new cells, the ratio of the organelle to cellular volume changes manifesting in the laser imagery of such tissues. In order to develop a metric that can…
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