Data Mining in Healthcare
Keywords |
Classification |
Keyword |
OFICIAL |
Medicine |
Instance: 2019/2020 - 2S (of 10-02-2020 to 31-07-2020)
Cycles of Study/Courses
Teaching language
Suitable for English-speaking students
Objectives
This unit aims to empower students with the necessary knowledge and skills to: identify problems where data mining techniques could be applied; to apply data modeling methods, and specifically to apply machine learning techniques; to be able to interpret results in the context of practical medicine and clinical research in health services.
Learning outcomes and competences
Apply data modeling methods, and specifically apply machine learning techniques; be able to interpret results in the context of practical medicine and clinical research in health services.
Working method
Presencial
Program
Machine learning and data mining (introduction, practical scenarios, the knowledge discovery process, specific characteristics in the area of health); data modeling, medical data preprocessing, data quality in health; supervised learning (decision trees, Bayesian classification, neural networks); unsupervised learning (cluster analysis, outlier analysis, association and mining frequent pattern analysis); evaluation of machine learning techniques (classification models, clustering); basic concepts of visual data mining, text mining and Web mining.
Software: RapidMiner e Weka.
Mandatory literature
Jiawei Han, Micheline Kamber and Jian Pei; Data Mining: Concepts and Techniques, Morgan Kaufmann, 2011
Ana Carolina Lorena, Katti Faceli, Márcia Oliveira, André Ponce de Leon Carvalho, João Gama; Extração de Conhecimento de Dados - Data Mining, Edições Silabo, 2012
Cruz-Correia RJ et al; Data Quality and Integration Issues in Electronic Health Records In: Hristidis V (ed.). Information Discovery on Electronic Health Records, Chapman and Hall, 2009
Vijay Kotu, Bala Deshpande; Predictive Analytics and Data Mining: Concepts and Practice with RapidMiner, Morgan Kaufmann, 2014
Teaching methods and learning activities
Theoretical lectures (4h) and practical lessons (8h), with topic discussion, individual and group exercises, and hands-on training on medical scenarios, with proper software. Tutorial guidance (14 hours) for monitoring and discussion of group assignments.
Evaluation Type
Distributed evaluation with final exam
Assessment Components
Designation |
Weight (%) |
Exame |
30,00 |
Trabalho escrito |
50,00 |
Participação presencial |
20,00 |
Total: |
100,00 |
Amount of time allocated to each course unit
Designation |
Time (hours) |
Apresentação/discussão de um trabalho científico |
2,00 |
Estudo autónomo |
17,00 |
Frequência das aulas |
12,00 |
Trabalho de investigação |
50,00 |
Total: |
81,00 |
Eligibility for exams
Presence in 75% of the classes
Calculation formula of final grade
Evaluation will be based on individual and group assignments (50%), oral presentations (20%) and final exam (30%)