Abstract

We propose a novel automatic segmentation algorithm that separates the components of human skin cells from the rest of the tissue in fluorescence data of three-dimensional scans using non-invasive multiphoton tomography. The algorithm encompasses a multi-stage merging on preprocessed superpixel images to ensure independence from a single empirical global threshold. This leads to a high robustness of the segmentation considering the depth-dependent data characteristics, which include variable contrasts and cell sizes. The subsequent classification of cell cytoplasm and nuclei are based on a cell model described by a set of four features. Two novel features, a relationship between outer cell and inner nucleus (OCIN) and a stability index, were derived. The OCIN feature describes the topology of the model, while the stability index indicates segment quality in the multi-stage merging process. These two new features, combined with the local gradient magnitude and compactness, are used for the model-based fuzzy evaluation of the cell segments. We exemplify our approach on an image stack with 200 × 200 × 100 μm3, including the skin layers of the stratum spinosum and the stratum basale of a healthy volunteer. Our image processing pipeline contributes to the fully automated classification of human skin cells in multiphoton data and provides a basis for the detection of skin cancer using non-invasive optical biopsy.

Highlights

  • We propose a novel automatic segmentation algorithm that separates the components of human skin cells from the rest of the tissue in fluorescence data of three-dimensional scans using non-invasive multiphoton tomography

  • Malignant melanoma is a skin cancer that develops from melanocytes, which are pigment-containing cells found in the basal layer

  • A new clinical application has been established, namely, high-resolution non-invasive and non-destructive imaging of living tissue—known as nonlinear "optical biopsy"[12,13,14]. This provides the basis for an early diagnosis at the cellular level or a course assessment in a physiological environment

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Summary

Introduction

We propose a novel automatic segmentation algorithm that separates the components of human skin cells from the rest of the tissue in fluorescence data of three-dimensional scans using non-invasive multiphoton tomography. The combination of chemical-selective imaging and subcellular spatial resolution gives insight into the metabolism of cells and provides access to functional i­maging[9,10,11] Based on these methods, a new clinical application has been established, namely, high-resolution non-invasive and non-destructive imaging of living tissue—known as nonlinear "optical biopsy"[12,13,14]. A new clinical application has been established, namely, high-resolution non-invasive and non-destructive imaging of living tissue—known as nonlinear "optical biopsy"[12,13,14] This provides the basis for an early diagnosis at the cellular level or a course assessment in a physiological environment. The research field of detecting malignant melanomas by means of MPT is still in its infancy and, in addition to the validation of suitable features, requires the development of image processing algorithms for the automatic classification of tissue structures

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