Machine learning about glaucoma

Untreated glaucoma is a major cause of sight loss. There are several forms and they are all essentially caused by damage to the optic nerve due to increased pressure within the eye. A collaboration between scientists in Algeria and Belgium has led to a new “intelligent system” for glaucoma detection that promises to help diagnose the condition sooner rather than later and allow patients to be treated in a timely manner and their sight saved.

Mohammed El Amine Lazouni and Amel Feroui of the Biomedical Engineering Laboratory, at Abou Bekr Belkaid Tlemcen University in Tlemcen, Algeria and Saïd Mahmoudi of the Computer Science Department at the University of Mons, in Belgium discuss their approach in detail in the International Journal of Computer Aided Engineering and Technology.

Technically, glaucoma originates from an increase in the intraocular pressure (IOP). In the healthy eye, the aqueous humour behind the cornea is maintained in equilibrium with and equal quantity of liquid being discharged by the eye and this region refilled with fluid continuously. However, in glaucoma the rate of flow of liquid out of this cavity is slower than the flow into the space and the pressure within rise, putting damaging pressure on the optic nerve. Open-angle glaucoma is the most common form but another condition called normal tension glaucoma can be just as debilitating. Closed-angle glaucoma is considered a medical emergency. The most common form causes no pain, but gradually leads to damage of one’s peripheral vision and ultimately the whole field of vision, causing complete blindness.

The team’s approach involves one of the standard tests for the early stages of glaucoma measuring the ratio of cup to disc measurements of the retina. Machine learning built on a database of these ratios allows an early diagnosis for a new patient to be made very quickly and accurately, almost 9%%. Such accuracy would allow the ophthalmologist to make a much more precise estimate of glaucoma risk for their patient.

Lazouni, M.E.A., Feroui, A. and Mahmoudi, S. (2019) ‘A new intelligent system for glaucoma disease detection‘, Int. J. Computer Aided Engineering and Technology, Vol. 11, Nos. 4/5, pp.613-633.