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07 February 2018 Photo Facebook
Louzanne and Marné included in national student cross country teams
Athlete Louzanne Coetzee, and her guide, Xavier Adams

Two Kovsie athletes, including the blind athlete and world record holder, Louzanne Coetzee, have been included in the national student cross country team.

Coetzee and Marné Mentz will compete at the World Student Cross Country championship on 7 April in St Gallen in Switzerland.

They qualified for the team after good performances at the Athletics South Africa’s cross country trials held at the University of the Free State (UFS) on 20 January. The distance was over 10km.

What makes Coetzee’s inclusion even more remarkable is the fact that she will be competing against able-bodied runners. The world record holder in the 5 000m in her disability category (T-11) and her new guide, Xavier Adams, finished first among the female students in a time of 39:32, which is her personal best. Mentz ended in second place for students in 39:44. They will make up two of the six spots in the women’s team in Switzerland.

First for Coetzee

It is the first time that Coetzee was chosen for an able-bodied national team. She is doing a master’s degree in Reconciliation and Social Cohesion this year and Mentz is in her final year of a BEd Intermediate Phase.

Tshepang Sello, another Kovsie and an Olympic athlete from Lesotho, took first position for students in 38:04 but did not qualify for the South African team because of her Lesotho citizenship.

Kesa Molotsane (35:29) was the overall winner. Although Molotsane is still doing her honours this year, she ran in the open division as she no longer qualifies as a student because she is over the age of 25, according to University Sport South Africa regulations.

Molotsane ,26, is the national cross country champion of 2016 and obtained second spot last year.

News Archive

Mathematical methods used to detect and classify breast cancer masses
2016-08-10

Description: Breast lesions Tags: Breast lesions

Examples of Acho’s breast mass
segmentation identification

Breast cancer is the leading cause of female mortality in developing countries. According to the World Health Organization (WHO), the low survival rates in developing countries are mainly due to the lack of early detection and adequate diagnosis programs.

Seeing the picture more clearly

Susan Acho from the University of the Free State’s Department of Medical Physics, breast cancer research focuses on using mathematical methods to delineate and classify breast masses. Advancements in medical research have led to remarkable progress in breast cancer detection, however, according to Acho, the methods of diagnosis currently available commercially, lack a detailed finesse in accurately identifying the boundaries of breast mass lesions.

Inspiration drawn from pioneer

Drawing inspiration from the Mammography Computer Aided Diagnosis Development and Implementation (CAADI) project, which was the brainchild Prof William Rae, Head of the department of Medical Physics, Acho’s MMedSc thesis titled ‘Segmentation and Quantitative Characterisation of Breast Masses Imaged using Digital Mammography’ investigates classical segmentation algorithms, texture features and classification of breast masses in mammography. It is a rare research topic in South Africa.

 Characterisation of breast masses, involves delineating and analysing the breast mass region on a mammogram in order to determine its shape, margin and texture composition. Computer-aided diagnosis (CAD) program detects the outline of the mass lesion, and uses this information together with its texture features to determine the clinical traits of the mass. CAD programs mark suspicious areas for second look or areas on a mammogram that the radiologist might have overlooked. It can act as an independent double reader of a mammogram in institutions where there is a shortage of trained mammogram readers. 

Light at the end of the tunnel

Breast cancer is one of the most common malignancies among females in South Africa. “The challenge is being able to apply these mathematical methods in the medical field to help find solutions to specific medical problems, and that’s what I hope my research will do,” she says.

By using mathematics, physics and digital imaging to understand breast masses on mammograms, her research bridges the gap between these fields to provide algorithms which are applicable in medical image interpretation.

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