machine learning applications in cancer prognosis and
TRANSCRIPT
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Machine learning applications in
cancer prognosis and prediction
Andrii Rozumnyi
25.11.2016
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Content
o Introduction
oML structure
o Process steps in ML
oML methods for cancer prediction
o Scientific researches
oData science challenges related to cancer problem
o Homework
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Introduction
Cancer is a group of diseases involving abnormal cell
growth with the potential to invade or spread to other
parts of the body (Malignant tumors).
The most common treatments for cancer are
• surgery
• chemotherapy
• radiation
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Introduction
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Question
How can we use Machine Learning in cancer prognosis
and prediction?
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ML can help in:
• prediction of cancer susceptibility – risk assessment
prior to occurrence.
• prediction of cancer recurrence – likelihood of
redeveloping.
• prediction of cancer survivability – life expectancy,
survival, progression, tumor-drug sensitivity.
Introduction
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ML
Supervised
Classification Regression
Unsupervised
Clustering Association
Define a class
from finite number
of classes
Define a relation
between
variables
Discover groups
of data
Rules generation
Machine Learning structure
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•Filling missing data
•Identify/remove outliers
•Data transformation (normalization, aggregation)
•Resolve inconsistencies
Data processing
Process steps in ML
•Feature importance
•Dimensionality reduction (PCA, SVD)
•Feature construction
Feature engineering
•Choose method
•Pick parameters
•Results evaluation (Cross-validation)
Model building (+ evaluation)
•Combine different models
•Results evaluation (Cross-validation)
•Useful guide http://mlwave.com/kaggle-ensembling-guide/
Ensembling
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vectorparameters
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Logistic regression
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Breast cancer classification by DT
Decision tree learned from the Wisconsin Breast Cancer dataset
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Random Forest
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SVM
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Kernel Trick
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Neural Networks
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Link: http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0061318
Machine Learning Prediction of Cancer Cell Sensitivity to
Drugs Based on Genomic and Chemical Properties
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Risk reducing factors
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Conclusion
• Cancer is a serious problem which leads to a lot of
deaths each year
• ML is actively involved in cancer related problems
• Your lifestyle influences on cancer related risks
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Find either data science challenge or scientific paper (that has
not been mentioned in the presentation) where cancer related
problem has been stated. Answer the following questions:
o What is the goal of the challenge/article?
o Describe the input data.
o Which Machine Learning techniques have been/could be used
for problem solving?
o Which difficulties have been/could be faced there?
Homework