Design And Implementation Of Data Mining For Medical Record System

(A Case Study Of Owerri General Hospital)

5 Chapters
|
26 Pages
|
9,193 Words
|

The title “Design and Implementation of Data Mining for Medical Record System” encompasses the development and execution of advanced techniques to extract valuable insights from vast medical datasets. In this context, data mining serves as a sophisticated analytical tool, utilizing algorithms to uncover patterns, correlations, and trends within medical records. This comprehensive approach facilitates the discovery of meaningful information that can significantly enhance healthcare decision-making processes. By integrating data mining methodologies into the medical record system, healthcare professionals can gain valuable perspectives on patient histories, treatment outcomes, and disease patterns. The implementation of such a system holds great promise in improving diagnostic accuracy, optimizing treatment strategies, and ultimately fostering more personalized and effective patient care. Additionally, the incorporation of data mining in medical records aligns with the evolving landscape of healthcare technology, contributing to the ongoing advancement of data-driven approaches in the medical domain.

ABSTRACT

Data mining is the extraction of hidden predictive information from large database which helps in predicting future trend and behavior thereby helping management make knowledge driven decisions. The data mining tool designed is to aid in quick access and retrieval of patients information to avoid time wasted in retrieving of such data from hospitals data warehouse. The data mining tool was also designed to discover hidden pattern that helps in decision making by management. Structured System Analysis and Design Methodology were used in the analysis of the existing system which also provided a guide for the design of the proposed system.
PHP programming language and my SQL was used in the creation of a data warehouse for patient‟s information and data mining tool for the retrieval of such information when needed.

TABLE OF CONTENT

Title Page
Approval Page
Certification Page
Dedication
Acknowledgement
Table of Contents
Abstract

CHAPTER ONE
INTRODUCTION
1.1 Background of Study
1.2 Statement of the Problem
1.3 Objectives of Study
1.4 Significance of Study
1.5 Scope of Study
1.6 Limitations of Study
1.7 Definition of related terms

CHAPTER TWO
REVIEW OF RELATED LITERATURE
2.1 Introduction
2.2 Review of related literature

CHAPTER THREE
SYSTEM ANALYSIS AND METHODOLOGY
3.1 System analysis
3.2 Method of data collection
3.2.1 Interviewing key officer
3.2.2 Observation method
3.2.3 Examination of document
3.3 Analysis of the existing system
3.3.1 Organization profile chart
3.3.2 Advantages of the existing system
3.3.3 Disadvantage of the existing system
3.4 Analysis of the proposed system
3.4.1 Justification of the proposed system
3.5 Methodology
3.5.1 Recommended appropriate mode

CHAPTER FOUR
SYSTEM DESIGN AND IMPLEMENTATION
4.1 Overview of design
4.2 Main menu
4.3 Program modules specification
4.3.1 Database design and specification
4.3.2 Input/output specification
4.3.3 Input form
4.3.4 Output form
4.3.4.1 Medical record system
4.4 Flowchart of the proposed solution
4.5 Choice and justification of programming language
4.6 System requirement
4.7 Implementation plan
4.7.1 Testing
4.7.2 Conversion
4.7.3 Training
4.8 Maintenance details

CHAPTER FIVE
SUMMARY, RECOMMENDATIONS, CONCLUSION
5.1 Summary
5.2 Review of achievements
5.3 Areas of application
5.4 Suggestion for further studies
5.5 Recommendation
5.6 Conclusion
References
Appendix A (Program codes)
Appendix B (Sample, output forms

CHAPTER ONE

INTRODUCTION
1.1 BACKGROUND OF STUDY
Data mining, is the extraction of hidden predictive information from large database,
is a powerful new technology with great potential to help companies focus on the
most important information in their data warehouses. Data mining tools predict
future trends and behaviors, allowing businesses to make proactive, knowledge
driven decisions. The automated, prospective analysis offered by data mining move
beyond the analyses of past events provided by retrospective tools typical of
decision support systems. Data mining tools can answer business questions that
traditionally were too time consuming to resolve. The scour databases for hidden
patterns, finding predictive information those experts may miss because it lies
outside their expectations.
Most companies already collect and refine massive quantities of data. Data mining
techniques can be implemented rapidly on existing software and hardware
platforms to enhance the value of existing information resources, and can be
integrated with new products and system as they are brought on-line. Which
implemented on high performance client/server or parallel processing computers,
data mining tools can analyze massive database to deliver answers to questions
such as “Which client are most likely to respond to my next promotional mailing,
and Why?”
Data mining techniques are result of a long process research and product
development. This evolution began when business data was first stored on
computers, continued with improvement in data access, and more recently,
generated technologies that allow users to navigate through their data in real time.
Data mining takes this evolutionary process beyond retrospective data access and
navigation to prospective and proactive information delivery.
Data mining is ready for application in the business community because it is
supported by three technologies that are sufficiently mature: massive data
collection, powerful multiprocessor computers and data mining algorithms. In this
evolution from business data to business information, each new step has built upon
the previous one. For example, dynamic data access is critical for drill-through in
data navigation applications, and the ability to store large database is critical to
data mining.
The file management is obsolete in developed countries like the United States
where and in developing countries like Nigeria the file system is still processed
manually in most medical centers; this is as a result of low standard of technology.
It was clear that computer is everywhere in Nigeria. These computers are for
money making and as a result of this, our hospitals lack computerized services, but
with the help of data mining we can also computerize our hospitals.

1.2 STATEMENT OF THE PROBLEM
The problem of data mining has become very crucial in areas of privacy of data.
Specifically regarding the source of the data analyzed for certain purpose. My
research in Owerri General Hospital here reveals that patients visit the hospital and
they waste a lot of time. The patients waits for the nurses or the attendants to get
their data and there are volumes of files to search through before the patients files
is finally retrieved or the patients might forget his/her card when visit the hospital.
It there means that the patient‟s data cannot be found due to the fact that the Nurse
does not know the patients number. In this case it is either that the patients is
denied treatment by the Doctor or the Nurses will check through the volumes of
files in order to retrieved his/her data, this is time consuming problem. There is a
problem of misplacing of patients data, the non-availability of relevant forms like
x-ray/laboratory forms and chats (pressure chats temperature) and requirement of
more workers to carry the folders into the consulting rooms as an evident.
Moreover, there are mistakes in entering patient‟s records. Two patients might be
given the same number and there could be wrong spelling and loss of important
information. There is also lack of space for storing all the files and also due to
carelessness on the part of staff.
Furthermore, volume of work for the hospital staff is much; this is because the
ratio of patients to staff of Owerri General Hospital is so much. So staffs are over
worked and they hurry through their duty, hence they carry out such duties lousily
which makes the Doctors unfriendly to their patients.

1.3 OBJECTIVE OF STUDY
Objectives of this research work are to:
Create a data warehouse for storage of patient‟s information thereby
eliminating manual file storage of patient‟s records.
Design a good data mining tool that will help in easy retrieval of patient
information thereby reducing time wastage and improve service delivery.
The data mining tool will be able to discover hidden pattern in large volume
of data which will help in good decision making.

1.4 SIGNIFICANCE OF STUDY
This research will cover the creation of good database system for the management
of patient‟s records in Owerri general hospital and also provide efficient data
mining tool for easy retrieval of data and discovery of hidden patterns in large
volume of data.

1.5 SCOPE OF STUDY
This research work will be carried out on data mining for medical record system of
Owerri General Hospital. The work reported in this research could be viewed as a
step towards enhancing databases with functionalities.

1.6 LIMITATION OF STUDY
Data mining record is limited in that; some manual operation will still be needed to
carry out the operation effectively. There was some constraints encountered during
collection of data, poor data collection becomes apparent due to interviewing of
hospital representatives like the consultants. Nurses, Doctors, Hospital attendants
who were reluctant to disclose important information and statistical data which
otherwise would have been relevant to this research, due to hospital secret which
breeds some indifferent attitudes towards that.
It takes a long time and large commitment of resources to get a good result,
unavailability of text and materials on this topic, made gathering of facts very
difficult, some of the facts were gathered from the internet, which is quite
expensive.

1.7 DEFINITION OF TERMS
Data Mining: Can be defined as “The nontrivial extraction of implicit, previously
unknown, and potentially useful information from data, and “The science of
extracting useful information from large data set or databases”.
It involves sorting through large amounts of data and picking out relevant
information.
Information Retrieval: The act of locating quantities of data stored in a Database
and producing useful information from the data.
Information Processing: A method of organizing, processing and extracting
information to be easily stored, retrieved, searched and updated.
Record: It is a unit of data representing a particular transaction or a basic element
of a file consisting in turn a number of interrelated data elements.
Hospital: A hospital is an institution of medical treatment of the sick and injured
people.
Model: Is a pattern or mathematical/symbolic representation of real life
System and or abstract system behaviors.
Artificial Intelligence: It is a branch of computer science that is dedicated to the
study of the ways in which computers can be used to emulate or duplicate most
human function.
Knowledge Base: Is an organized collection of declarative and procedural
relationships that represents expertise in a focused area

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MORE DESCRIPTION:

Data Mining For Medical Record System:

Data mining plays a crucial role in the healthcare industry, especially in managing and analyzing medical records. Medical record systems, often referred to as Electronic Health Records (EHR) or Electronic Medical Records (EMR) systems, contain a wealth of information about patients, their medical history, treatments, and outcomes. Data mining techniques can be employed to extract valuable insights, improve patient care, and support healthcare decision-making. Here’s how data mining can be applied to a medical record system:

  1. Data Preprocessing: Before mining the data, it’s essential to preprocess it. This involves cleaning, transforming, and normalizing data to ensure its quality and consistency. Data preprocessing helps remove noise and outliers that can affect the accuracy of mining results.
  2. Predictive Analytics: Predictive analytics involves using data mining algorithms to build models that can predict future events or outcomes. In healthcare, predictive analytics can be used to forecast disease trends, identify patients at risk of certain conditions, or predict hospital readmissions. Algorithms like decision trees, logistic regression, and machine learning techniques can be applied.
  3. Disease Identification: Data mining can be used to identify patterns or associations within patient records that can help in diagnosing diseases. For example, clustering algorithms can group patients with similar symptoms or medical histories, aiding in disease diagnosis.
  4. Treatment Effectiveness: Analyzing patient records can help assess the effectiveness of different treatments or interventions. By comparing outcomes for patients with similar conditions who received different treatments, healthcare providers can make informed decisions about the most effective approaches.
  5. Fraud Detection: Data mining can be used to detect fraudulent activities in healthcare billing and insurance claims. Anomalies in billing patterns, duplicate claims, or unusual patient behaviors can be flagged for further investigation.
  6. Clinical Decision Support: Data mining can assist healthcare professionals by providing decision support tools. These tools can help doctors choose the most appropriate treatment plans based on historical patient data and medical literature.
  7. Patient Segmentation: Clustering techniques can group patients with similar characteristics or medical histories. This can help in tailoring treatment plans or interventions for specific patient groups, improving patient outcomes.
  8. Drug Discovery: Data mining can be applied to medical records to discover potential drug interactions, adverse reactions, or new therapeutic targets. This can accelerate drug development and improve patient safety.
  9. Public Health Surveillance: Monitoring and analyzing medical records can help in identifying disease outbreaks and tracking the spread of diseases in real-time. This information is invaluable for public health officials in managing and mitigating health crises.
  10. Research: Researchers can use data mining to extract valuable insights from medical records for epidemiological studies, clinical trials, and scientific discoveries.

It’s important to note that handling medical data requires strict adherence to privacy regulations such as the Health Insurance Portability and Accountability Act (HIPAA) in the United States or the General Data Protection Regulation (GDPR) in Europe. Ensuring the security and privacy of patient information is paramount when applying data mining techniques to medical record systems. Additionally, involving healthcare professionals in the process is essential to interpret the results accurately and make informed decisions for patient care.