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Here is a short summary of the concepts that will be covered in this course module.

Computational genefinding using hidden markov models

The first problem we will study is the annotation of DNA sequences into regions of interest. Our focus is on finding genes that code for proteins. Our approach is to use available annotated DNA sequences to train sequential models, and then to use the trained model to label new DNA segments. We will cover ab initio methods, as well as comparative methods which differ on whether information from other genomes is used as prior information.

Hidden Markov models (HMMs) are the technique of choice for the problem of finding genes in DNA sequences. We will cover the structure of HMMs, the Viterbi algorithm for annotation, the Baum-Welch algorithm for learning models, and pair HMMs to model genefinding in a comparative context. GENSCAN , the paradigmatic example of an ab initio gene finder, will be presented. If time permits, SLAM , a comparative gene finder based on pair HMMs will be introduced.

Since gene finding is complex, our exercise for this portion of the course will be to detect CpG islands on chromosome 22 . We will compare the performance of a global decoding methods (Viterbi decoding) against that of a local method (posterior decoding or smoothing).

Biomarker discovery and supervised learning

The next problem we will cover is that of molecular fingerprinting of disease. This is also known as the biomarker discovery problem. Given mRNA expression levels, or protein levels from normal and diseased cells, the computational problem is of determining biologically significant genes or proteins that are differentially expressed. This is usually the first step in generating causal models of disease. This part of the course draws on the pioneering work of Golub et. al. We will model the problem in the supervised learning framework and introduce k-nearest neighbours and support vector machine classifiers.

In this section of the course, we will analyse the prostate cancer microarray data set from the Broad institute to build classifiers which discriminate between cancer and normal cells. We will also experiment with various feature selection techniques to identify biologically significant genes that are differentially expressed in diseased cells. We will compare the relative effectiveness of global hyperplane classifiers like support vector machines against local methods as exemplified by k-nearest neighbor classifiers.

Systems biology and learning bayesian networks from data

The availability of high-throughput data which reveals the levels of mRNA and proteins in cells and their change over time, makes it possible to construct system level models of cellular activity. The inspiration for this part of the course comes from the 2005 study by Sachs et. al. which uses multi-parameter flow cytometry to reconstruct the T-cell signaling network in humans. The mathematical foundations of Bayesian networks will be covered, as well as the sparse candidate algorithm for learning Bayesian networks from high-throughput data. The use of interventional data to determine causal edges in the network will also be discussed.

The experiment for this section of the course is to use Bayesian network algorithms and the flow cytometry data available from the Science website to recreate the Sachs et. al. derivation of the T-cell signaling network.

Summary of course objectives

This course will teach you

  • how to use the underlying biology to constrain feature and model selection.
  • how to choose and adapt machine learning algorithms for biological problems.
  • how to design learning protocols to deal with incomplete, noisy data.
  • how to interpret the results of machine learning algorithms.

Questions & Answers

what is phylogeny
Odigie Reply
evolutionary history and relationship of an organism or group of organisms
AI-Robot
ok
Deng
what is biology
Hajah Reply
the study of living organisms and their interactions with one another and their environments
AI-Robot
what is biology
Victoria Reply
HOW CAN MAN ORGAN FUNCTION
Alfred Reply
the diagram of the digestive system
Assiatu Reply
allimentary cannel
Ogenrwot
How does twins formed
William Reply
They formed in two ways first when one sperm and one egg are splited by mitosis or two sperm and two eggs join together
Oluwatobi
what is genetics
Josephine Reply
Genetics is the study of heredity
Misack
how does twins formed?
Misack
What is manual
Hassan Reply
discuss biological phenomenon and provide pieces of evidence to show that it was responsible for the formation of eukaryotic organelles
Joseph Reply
what is biology
Yousuf Reply
the study of living organisms and their interactions with one another and their environment.
Wine
discuss the biological phenomenon and provide pieces of evidence to show that it was responsible for the formation of eukaryotic organelles in an essay form
Joseph Reply
what is the blood cells
Shaker Reply
list any five characteristics of the blood cells
Shaker
lack electricity and its more savely than electronic microscope because its naturally by using of light
Abdullahi Reply
advantage of electronic microscope is easily and clearly while disadvantage is dangerous because its electronic. advantage of light microscope is savely and naturally by sun while disadvantage is not easily,means its not sharp and not clear
Abdullahi
cell theory state that every organisms composed of one or more cell,cell is the basic unit of life
Abdullahi
is like gone fail us
DENG
cells is the basic structure and functions of all living things
Ramadan
What is classification
ISCONT Reply
is organisms that are similar into groups called tara
Yamosa
in what situation (s) would be the use of a scanning electron microscope be ideal and why?
Kenna Reply
A scanning electron microscope (SEM) is ideal for situations requiring high-resolution imaging of surfaces. It is commonly used in materials science, biology, and geology to examine the topography and composition of samples at a nanoscale level. SEM is particularly useful for studying fine details,
Hilary
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Source:  OpenStax, Statistical machine learning for computational biology. OpenStax CNX. Oct 14, 2007 Download for free at http://cnx.org/content/col10455/1.2
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