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Dive into the research topics where Tehmina Khalil is active.

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Featured researches published by Tehmina Khalil.


science and information conference | 2014

A survey of feature selection and feature extraction techniques in machine learning

Samina Khalid; Tehmina Khalil; Shamila Nasreen

Dimensionality reduction as a preprocessing step to machine learning is effective in removing irrelevant and redundant data, increasing learning accuracy, and improving result comprehensibility. However, the recent increase of dimensionality of data poses a severe challenge to many existing feature selection and feature extraction methods with respect to efficiency and effectiveness. In the field of machine learning and pattern recognition, dimensionality reduction is important area, where many approaches have been proposed. In this paper, some widely used feature selection and feature extraction techniques have analyzed with the purpose of how effectively these techniques can be used to achieve high performance of learning algorithms that ultimately improves predictive accuracy of classifier. An endeavor to analyze dimensionality reduction techniques briefly with the purpose to investigate strengths and weaknesses of some widely used dimensionality reduction methods is presented.


science and information conference | 2014

Review of Machine Learning techniques for glaucoma detection and prediction

Tehmina Khalil; Samina Khalid; Adeel M. Syed

Glaucoma is a silent thief of sight. Detecting glaucoma at early stages is almost impossible and presently there is no cure of glaucoma at later stages. Different automated glaucoma detection systems were thoroughly analyzed in this study. A detailed literature survey of preprocessing, feature extraction, feature selection, Machine Learning (ML) techniques and data sets used for testing and training purpose was conducted. Automated prediction of glaucoma is very important and unfortunately a little work has been done in this regard and minimum accuracy has been achieved. However automated detection of glaucoma at latter stage is at a mature level and most of the ML techniques are able to detect 85% of glaucoma cases accurately. Optical Coherence Tomography (OCT) can be used effectively for prediction of glaucoma.


Journal of Digital Imaging | 2018

Automated Segmentation and Quantification of Drusen in Fundus and Optical Coherence Tomography Images for Detection of ARMD

Samina Khalid; M. Usman Akram; Taimur Hassan; Amina Jameel; Tehmina Khalil

Age-related macular degeneration (ARMD) is one of the most common retinal syndromes that occurs in elderly people. Different eye testing techniques such as fundus photography and optical coherence tomography (OCT) are used to clinically examine the ARMD-affected patients. Many researchers have worked on detecting ARMD from fundus images, few of them also worked on detecting ARMD from OCT images. However, there are only few systems that establish the correspondence between fundus and OCT images to give an accurate prediction of ARMD pathology. In this paper, we present fully automated decision support system that can automatically detect ARMD by establishing correspondence between OCT and fundus imagery. The proposed system also distinguishes between early, suspect and confirmed ARMD by correlating OCT B-scans with respective region of the fundus image. In first phase, proposed system uses different B-scan based features along with support vector machine (SVM) to detect the presence of drusens and classify it as ARMD or normal case. In case input OCT scan is classified as ARMD, region of interest from corresponding fundus image is considered for further evaluation. The analysis of fundus image is performed using contrast enhancement and adaptive thresholding to detect possible drusens from fundus image and proposed system finally classified it as early stage ARMD or advance stage ARMD. The proposed system is tested on local data set of 100 patients with100 fundus images and 6800 OCT B-scans. Proposed system detects ARMD with the accuracy, sensitivity, and specificity ratings of 98.0, 100, and 97.14%, respectively.


2017 International Conference on Communication, Computing and Digital Systems (C-CODE) | 2017

Hybrid textural feature set based automated diagnosis system for Age Related Macular Degeneration using fundus images

Samina Khalid; M. Usman Akram; Tehmina Khalil

Macula is the most sensitive component of human retina and it is responsible for sharp colored vision. Any abnormality effecting macula results in blurriness and other eye impairments. Two main abnormalities related to macula are macular edema and ARMD (Age Related Macular Degeneration). This paper focus on automated detection of ARMD using digital fundus images. The proposed technique extracts macular region automatically from input image and then analyzes texture of macular region to identify abnormal macula. A novel hybrid feature set consisting of different textural and color features have been proposed. The experiments are conducted using publicly available STARE and locally available AFIO databases. Our proposed system achieves 97.5%, 83% and 95.52% sensitivity, specificity, and accuracy respectively.


Iet Image Processing | 2017

Improved automated detection of glaucoma from fundus image using hybrid structural and textural features

Tehmina Khalil; Muhammad Usman Akram; Samina Khalid; Amina Jameel

Glaucoma is a group of eye disorders that damage the optic nerve. Considering a single eye condition for the diagnosis of glaucoma has failed to detect all glaucoma cases accurately. A reliable computer-aided diagnosis system is proposed based on a novel combination of hybrid structural and textural features. The system improves the decision-making process after analysing a variety of glaucoma conditions. It consists of two main modules hybrid structural feature-set (HSF) and hybrid texture feature-set (HTF). HSF module can classify a sample using support vector machine (SVM) from different structural glaucoma condition and the HTF module analyses the sample founded on various texture and intensity-based features and again using SVM makes a decision. In the case of any conflict in the results of both modules, a suspected class is introduced. A novel algorithm to compute the super-pixels has also been proposed to detect the damaged cup. This feature alone outperformed the current state-of-the-art methods with 94% sensitivity. Cup-to-disc ratio calculation method for cup and disc segmentation, involving two different channels has been introduced increasing the overall accuracy. The proposed system has given exceptional results with 100% accuracy for glaucoma referral.


SpringerPlus | 2016

Automated detection of glaucoma using structural and non structural features

Anum Abdul Salam; Tehmina Khalil; M. Usman Akram; Amina Jameel; Imran Basit


arXiv: Software Engineering | 2009

Measurable & Scalable NFRs using Fuzzy Logic and Likert Scale

Nasir Mahmood Malik; Arif Mushtaq; Samina Khalid; Tehmina Khalil; Faisal Munir Malik


IEEE Access | 2018

Detection of Glaucoma Using Cup to Disc Ratio From Spectral Domain Optical Coherence Tomography Images

Tehmina Khalil; M. Usman Akram; Hina Raja; Amina Jameel; Imran Basit


2017 Computing Conference | 2017

An overview of automated glaucoma detection

Tehmina Khalil; Muhammad Usman Akram; Samina Khalid; Amina Jameel


2017 Computing Conference | 2017

Interview based iterative requirement elicitation for ARMD detection in OCT images

Samina Khalid; Sadaf Ayaz; Tehmina Khalil; M. Usman Akram; Sadaf Sahar

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M. Usman Akram

National University of Sciences and Technology

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Muhammad Usman Akram

National University of Sciences and Technology

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Anum Abdul Salam

College of Electrical and Mechanical Engineering

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Hina Raja

National University of Sciences and Technology

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Sadaf Ayaz

College of Electrical and Mechanical Engineering

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