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Computational Decision Support Systems and Diagnostic Tools

Before starting this step, the clinician preprocesses the images by removing missing or NAN values or normalizing the data to a particular range. The classification algorithms that the clinician uses to obtain these values are Naïve Bayes, Neural Network, SVM, and Multi-Class Classifier.18 Once the data mining has been completed, then the clinician will input the values into the GUI.

3.3.2. Graphical User Interface

A GUI allows users to interact with the system, i.e. the user can click on the screen, retrieve values, or give commands. Examples of GUIs include computer games and interactive mp3 player functions. Software with GUI functions includes the following. NeoSoniX is the first hand piece to combine sonic, nonlinear oscillation with linear ultrasound.19 Together, with AdvanTec software, NeoSoniX decreases the time and energy required for cataract removal.20 The software improves the sensory feedback system by increasing the accuracy and consistency of ultrasound energy, and maximizes ultrasonic performance. Intraocular lens (IOL) power revolutionizes the measurement of the ocular axis and sets new standards for speed and accuracy, even with eyes that are not ideally formed. IOLs have an accelerated workflow, produce user-independent measurement results, and are easy on patients with no ocular contact. The automatic and interactive system provides healthcare professionals with decision support. Once these steps are completed, the clinician will have the tools to diagnose specific diseases and the capabilities to avoid the risks of visual disability.

3.4.Role of Computational System in Curing Disease of an Eye

Computational systems can help detect, diagnose, and treat eye diseases such as diabetic retinopathy, cataracts, glaucoma, blepharitis, rosacea, Sjögren, dry eyes, retinal detachment (RD), and amblyopia. Our computational system will use eye images, taken by using slit-lamp, p2, or a similar method, as input and will classify the images into classes such as cataract, diabetic retinopathy, etc. This system will not only save the clinician time, but it will

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