Title:A Novel Invasive Weed Optimization and its Variant for the Detection of Polycystic Ovary Syndrome
Volume: 20
Author(s): R. Saranya*
Affiliation:
- Department of Computer Science with Data Analytics, PSG College of Arts and Science, India
Keywords:
Follicles, Polycystic ovaries, Invasive weed optimization, Particle swarm optimization, Modified Otsu, Modified Invasive Weed Optimization.
Abstract:
Introduction:
This study intends to provide a novel Invasive Weed Optimization (IWO) algorithm for the detection of Polycystic Ovary Syndrome (PCOS) from
ultrasound ovarian images. PCOS is an intricate anarchy described by hyperandrogenemia and irregular menstruation. Indian women are
increasingly finding reproductive disorders, namely PCOS.
Methods:
The women having PCOS grow more small follicles in their ovaries. The radiologists take a look into women's ovaries by use of ultrasound
scanning equipment to manually count the number of follicles and their size for fertility treatment. These may lead to error diagnosis.
Results:
This paper proposed an automatic follicle detection system for identifying PCOS in the ovary using IWO. The performance of IWO is improved in
Modified Invasive Weed Optimization (MIWO). This algorithm imitates the biological weeds' behavior. The MIWO is employed to obtain the
optimal threshold by maximizing the between-class variance of the modified Otsu method. The efficiency of the proposed method has been
compared with the well-known optimization technique called Particle Swarm Optimization (PSO) and with IWO.
Conclusion:
Experimental results proved that the MIWO finds an optimal threshold higher than that of IWO and PSO.