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Computerized treatment of byopia and presbyopiat

 

Table Of Contents


Chapter ONE

1.1 Introduction
1.2 Background of Study
1.3 Problem Statement
1.4 Objectives of Study
1.5 Limitations of Study
1.6 Scope of Study
1.7 Significance of Study
1.8 Structure of the Research
1.9 Definition of Terms

Chapter TWO

2.1 Overview of Byopia and Presbyopia
2.2 Causes of Byopia and Presbyopia
2.3 Symptoms of Byopia and Presbyopia
2.4 Traditional Treatment Methods
2.5 Advancements in Technology for Treatment
2.6 Comparison of Treatment Options
2.7 Success Rates of Different Treatments
2.8 Side Effects of Treatments
2.9 Patient Satisfaction and Quality of Life
2.10 Future Trends in Byopia and Presbyopia Treatment

Chapter THREE

3.1 Research Design
3.2 Sampling Techniques
3.3 Data Collection Methods
3.4 Data Analysis Techniques
3.5 Ethical Considerations
3.6 Research Limitations
3.7 Reliability and Validity of Data
3.8 Research Timeline and Budget

Chapter FOUR

4.1 Overview of Research Findings
4.2 Analysis of Treatment Outcomes
4.3 Comparison of Treatment Success Rates
4.4 Patient Feedback and Satisfaction
4.5 Impact of Technology on Treatment
4.6 Addressing Treatment Limitations
4.7 Recommendations for Improvement
4.8 Areas for Future Research

Chapter FIVE

5.1 Summary of Findings
5.2 Conclusion
5.3 Implications of the Study
5.4 Contributions to the Field
5.5 Recommendations for Practice
5.6 Recommendations for Further Research

Project Abstract

Abstract
Presbyopia and hyperopia are common age-related vision conditions that affect a significant portion of the population worldwide. Traditional treatment methods for presbyopia and hyperopia include eyeglasses, contact lenses, and surgical interventions such as LASIK. However, these approaches may not be suitable for all patients and can have limitations in terms of effectiveness and convenience. The emergence of computerized treatment options for presbyopia and hyperopia has opened up new possibilities for improving vision outcomes in affected individuals. Computerized treatment methods combine advanced technologies such as wavefront analysis, adaptive optics, and laser systems to provide customized and precise correction of refractive errors. This research project aims to investigate the efficacy and safety of computerized treatment approaches for presbyopia and hyperopia. The study will involve a comprehensive review of existing literature on computerized treatment methods, including wavefront-guided treatments, topography-guided treatments, and multifocal ablation techniques. Additionally, the project will include a clinical trial component to assess the outcomes of computerized treatments in a sample of presbyopic and hyperopic patients. The research will focus on evaluating key parameters such as visual acuity, contrast sensitivity, and patient satisfaction following computerized treatment interventions. Special attention will be given to assessing the durability of treatment effects over time and identifying any potential side effects or complications associated with these novel approaches. Furthermore, the project will explore the role of artificial intelligence and machine learning algorithms in optimizing treatment planning and enhancing treatment outcomes for presbyopia and hyperopia. By leveraging computational tools and data-driven approaches, the research aims to improve the precision and predictability of computerized treatments in correcting refractive errors. Overall, this research project seeks to advance our understanding of computerized treatment options for presbyopia and hyperopia and their potential benefits for patients seeking alternatives to traditional vision correction methods. By exploring the latest technological advancements in refractive surgery and vision correction, this study aims to contribute to the development of more personalized and effective treatment strategies for individuals with presbyopia and hyperopia.

Project Overview

INTRODUCTION

1.1 BACKGROUND OF THE STUDY

The discovery of the computer has to a greater extent revolutionized most profession and their work performance. Doctors, accountants, Architects, Bankers, Engineers, Flight Controllers cannot work without the help of the computer. Recent studies have shown that computer can be of great help in the diagnosing of several eye defects like short and long sightedness. Artificial Intelligence elements like Artificial Neural Networks, Fuzzy logic, Expert Systems, Genetic Algorithms, tend to emulate the human brain when it comes to detecting defects in the human body. The techniques used in this paper are Support Vector Machines (SVMs) and Artificial Neural Networks (ANNs) to diagnose eyesight related problems for the people who have problems in their vision. Artificial intelligence in Medicine (AIM) field emerged in the early 1970’s in response to several simultaneous
needs, opportunities and interests. An increased demand for high quality medical services coupled with the explosive growth of medical knowledge has led to the usage of computer program that could be used to assist physicians and other
eye health care providers in discharging their clinical roles in diagnosis, therapy and prognosis (Javitt, 2003),.

Recently, Support Vector Machines have been used in a range of problems including bioinformatics (Yu, et all 2003) text categorization (Sebled et all 2000), classification and pattern recognition. The support vector machine is a method for dividing a feature space using an optimized hyper plane, whereas Artificial Neural networks have been successfully applied to problems in pattern classification, pattern matching, function approximation, optimization and associative Memories (Luger, G.F., 2004). In Artificial Neural Networks the nonlinearity of transfer function gives the network capability to emulate nonlinear mapping properties. In this research a feedback net mechanism has been used.

1.2 STATEMENT OF THE PROBLEM

Although humans are wise enough to learn about the body, its defects and how to implement solutions to them, our knowledge is greatly limited. Accuracy and speed of humans are always low. There are always mistakes especially when it comes to delicate parts of the body like the eyes.

Myopia and presbyopia which is short and long sightedness respectively has been in existence even before the invention of computers. Early detection and solution to it has also been a burden to humans due to limited knowledge and how slow we are. Some patients who have not shown any symptoms of myopia and presbyopia but have it are told to go home and relax due to we haven’t seen any physical known symptoms, hence worsening the situation.

1.3 OBJECTIVE OF THE STUDY

The main objective of this study is to design a computerized system for the diagnosis of myopia and presbyopia and to proffer necessary treatment. Specific objectives include:

      i.           To design and build an intelligent system in medicine to improve the efficiency of the current method of eye defect diagnosis.

    ii.           To develop an expert tool which incorporates decision support system characteristics to aid eye specialist in early detection of myopia and presbyopia.

  iii.           A specifically designed database, with the purpose of storing doctor and patient details, availability information of pharmacy and blood bank, diagnostic center services, doctor appointment schedule, diagnostic center services schedule, ER services alongside access levels for the intended specific user types of the system as the main aspects.

1.4 SCOPE OF THE STUDY

In order to achieve the objectives stated above, the scope of the study is limited to the following:

      i.           The study involves conducting research and analyzing the current system of operation in Obinwanne eye clinic Nkpor and to suggest a computerized method of detecting and solving myopia and presbyopia.

    ii.           The system involves creating a knowledge base which incorporates all the known symptoms of the eye defect in order to be able to detect and proffer solution as early as possible.

  iii.           The system is designed using Java which gives it the ability to run on any operating system.

By determining the scope of the study, the subsequent processes in developing the proposed system as the solution to the research problem would be easier and has clearer defined boundary, which in turn act as a guideline in developing the system.

1.5 JUSTIFICATION OF THE STUDY

Provision of healthcare services, particularly when it comes to eyes is a largely neglected area in Nigeria. Any meaningful improvement made in this field will therefore be beneficial for all medical practitioners involved. Generally, people attempting to receive services will be able to experience the advantages provided by a system that is efficient, effective, easy to use and affordable. In order to minimize suffering of the affected people and introduce efficiency in the system that will provide greater utility, this project work was commenced.

1.6 LIMITATION OF THE STUDY

The following are some factors, which acted as an impeachment or constraints to the progress of the project work;

a. Lack of Documented materials: It was difficult to start the project initially because reference materials at my disposal are limited.

b. Financial constraint is another factors that limited the researcher in owning out this project effectively.

c. Reluctance by the respondents in giving information fearing that the information sought would be used to intimidate them or print a negative image about them.

To counter this, I carried a pilot study to establish the possible cause of non-compliance in filling the questionnaires and adjusted the questionnaire accordingly.

Also I encouraged the respondents to participate without holding back the information they might be having as the research instruments would not bear their names.

1.7 ORGANIZATION OF THE STUDY

THIS paper is structured as follows:

®   Chapter one gives the general overview of myopia and presbyopia and how effective computers can be in their early diagnosis.

®   Chapter two presents the review of related work carried out.

®   Chapter Three provides the methodology used in the research work, analysis of the present system and solutions giving by the proposed system.

®   Chapter four gives the system specification and designs of the proposed system

®   Chapter five gives the conclusion and recommendation of the whole work

1.8 DEFINITION OF TERMS

      I.            Myopia: A condition in which close objects appear clearly but far ones appear blurry

  II.            Presbyopia: A gradual age related loss of the eyes ability to focus activity on nearly objects.

III.            Diagnosis: The identification of an illness through cross examination


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