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11 September 2018
Congratulations UFS GradStar students
In 2018, the UFS boasts 20 students in the top 100 who were selected for the,GradStar programme, compared to last year’s five.

Every year 100 South African students are selected through a rigorous four-phase judging process to become part of the GradStar programme. The programme is designed to provide previously unrecognised students with opportunities for employment and allow them to contribute positively to South Africa’s future growth. 

UFS students improve dramatically 

The 100 students selected show the most potential as future leaders in their respective fields. Besides academic achievement, entrants are also evaluated in terms of various soft skills including motivation, discipline, altruism, and attitude. The combination of all the judgement criteria promises to deliver top candidates for future employers. In 2018, the University of the Free State (UFS) boasts 20 students in the top 100, compared to last year’s five. 

Ready to make a difference

Each student will be connected with a business mentor to further ready them for the workplace. The entire process not only prepares graduates for employment, but also provides them an opportunity for self-knowledge and recognising their own strengths and weaknesses. The top 100 will compete for a spot in the “Ten of the Finest” to be announced on 26 September 2018.

Our best wishes accompany the following UFS students in the top 100: 

Bongani Sithole: Bachelor of Science
Carlo Visser: Bachelor of Science
Christian Cookson: Bachelor of Commerce
Elsa Moitsemang: Bachelor of Commerce
Jon-Dylon Petersen: Bachelor of Science
Joseph Alappattu: Bachelor of Science
Joshua Owusu-Sekyere: Bachelor of Commerce
Josiah Meyer: Bachelor of Science
Kayurin Govender: Bachelor of Commerce
Keshalia Naidoo: Bachelor of Arts

Lise-Mari Otto: Bachelor of Education
Meredith Green: Bachelor of Laws 
Nduduzo Kubheka: Bachelor of Science
Onalenna Lephoro: Bachelor of Laws 
Razia Adriaanse: Master of Laws
Refiloe Maqelepo: Bachelor of Commerce
Sajel Singh: Bachelor of Commerce Law
Sivuyile Mpatheni: LLB
Tebello Ntene: Bachelor of Science
Tshireletso Bogatsu: Bachelor of Accounting

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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