Litcius/Paper detail

Image Processing for Automatic Cell Nucleus Segmentation Using Super pixel and Clustering Methods on Histopathological Images

Firthouse Hassan Ahamed Shibly, Lakshmana Kumar. R

2023Tamjeed Journal of Healthcare Engineering and Science Technology18 citationsDOIOpen Access PDF

Abstract

On a daily basis, it appears that the number of cancer cases and cancer-related deaths are increasing. Early detection and treatment of the malignant region are critical for successful treatment. Early detection of sick cells is made possible with the use of computer-assisted programmes, which are then diagnosed by experienced pathologists due to their efforts. Using computer-aided programmes, this research found that cell nuclei could be automatically detected in high-resolution histopathological images using global segmentation methods such as k-Means and Fuzzy C Means and algorithms from superpixel segmentation methods such as SLIC, Quick-shift, Felzenszwalb, Watershed, and ERS. Using high-quality histopathology pictures, the researchers discovered that the k-means and FCM algorithms performed significantly better than the baseline techniques in the study. In terms of precision, the Quickshift and SLIC approaches produced superior outcomes. The K-means and FCM algorithms perform best in the F-M test, and the true negative ratio is more successful in the Quickshift and SLIC methods than in the F-M test.

Topics & Concepts

Cluster analysisComputer scienceSegmentationArtificial intelligencePixelWatershedPattern recognition (psychology)Image segmentationFuzzy logicComputer visionAI in cancer detectionDigital Imaging for Blood DiseasesBrain Tumor Detection and Classification
Image Processing for Automatic Cell Nucleus Segmentation Using Super pixel and Clustering Methods on Histopathological Images | Litcius