Artificial Intelligence and Machine Learning, February 2025
An Introduction to Computational biology, Machine learning and Artificial Intelligence
Details
When? Friday 7 February 2025, 09:00 to 17:00
Where? Online
CPD Approved This event is approved for CPD
This event is fully booked
*** This course contributes to the Royal Society of Biology's Industry Skills Certificate
An Introduction to Computational biology, Machine learning and Artificial Intelligence
Overview
These challenges can be addressed through appropriate application of computational methods such as artificial intelligence and machine learning. These techniques have significant advantages, in that they can cope with nonlinearity, complexity, high dimensionality and false discovery in biological data and generate solutions that have real world application. There has however been significant hype around the terms. Often techniques are applied inappropriately, are not fit for purpose or are inappropriately badged as machine learning or artificial Intelligence. This course sets out to demystify the terms offering practical solutions to the application of machine learning and artificial intelligence to solving biomedical problems. The strength and limitations of the approaches are discussed and practical solutions provided in a form accessible to non-computer scientists.
Aims
- provide intellectually challenging and professionally relevant training at the forefront of bioinformatics, machine learning, Artificial Intelligence and computational biology; accessible to non-computer scientists and led by academic experts
- develop the theoretical, practical and strategic skills needed to collect, understand, manage and analyse data
- provide understanding of and signposting to methodologies and resources that allow application of computational biology and machine learning techniques. Have a practical knowledge of the computational and artificial intelligence methods applicable to biological data
- provide a critical understanding of these methodologies and approaches and their advantages and limitations
- introduce the key data types encountered and sources of data
- to provide an understanding of the basis and application of approaches including:
- artificial neural networks
- shallow versus deep learning
- support vector machines
- random forests
- Ordination and clustering techniques
Who is the course for?
Learning outcomes
- Understand approaches through which biological data is obtained and may be exploited in the fields of biotechnology, medicine and related disciplines
- Practical application of machine learning methods to solve biological/medical data problems through data mining, construction of classification models and data analytics
- Demonstrate understanding and reasoned application of Artificial Intelligence and Machine learning methods in analysis of biological/medical data
- Critically evaluate the results generated through use of relevant scientific databases and web-based tools
- Select, format and apply appropriate analysis methods for use with real experimental data
Course tutor
Professor Graham Ball has 26 years' experience in the application of artificial intelligence and machine learning to biological problems. He has developed numerous approaches combining ML and statistical approaches for classification and systems biology. He has supervised 9 students (as 1st supervisor, 23 as second supervisor) from a biological background to PhD award in a machine learning discipline and well as over 80 Biosciences master's students. He has regularly run international bioinformatics/ Machine learning and Computational biology courses (France, India, China) annually for the last 15 years. He has lead numerous projects in the biomarker discovery and systems biology space over the last 20 years.
Current research interests have focused on the development and application of bioinformatic algorithms using Artificial Neural Networks (ANNs) to medical diagnostics and statistics including:
- Cancer systems biology and bioinformatics
- Biomarker Discovery and Drug target discovery through application of machine learning to biological “Big Data”
- Plant based systems for identification of molecular drivers of phenotype.
- Species distributions and ecological factors governing species abundance and decline.
- Machine learning based image assessment and classification of Immunohistochemical cores, MRI images and freshwater invertebrate taxa.
Certification and Continuing Professional Development (CPD)
A certificate of attendance will be provided after the event. We evaluate all of our training events, to make sure that we maintain a high quality of training.This event has been approved by the Royal Society of Biology for purposes of CPD and can be counted as 24 CPD points.
Professional Registers
This course supports registers competencies and has been identified as supporting competency development for: Registered Scientist (RSci).Competency area:
- Application of knowledge and understanding
Fees
Members - £120 + VAT- Members of Member Organisations, SCAS members - £180 + VAT
- Non-members who have completed a membership application and made payment - £120 + VAT
Contact
For further information about this course please contact Tia Salter, Training and Registers Officer at training@rsb.org.uk.Special requirements
If you have accessibility requirements, please let us know during your booking, and we will do what we can to accommodate your needs.Refunds
Terms and Conditions
By booking to attend this event, you are confirming you have agreed to the RSB's Terms and Conditions which can be found here.
Code of Conduct
By its Royal Charter, the Royal Society of Biology (RSB) has the powers to promote, establish and support standards of professional skill and conduct. The RSB is committed to ensuring equal opportunities in the life sciences, and supports diversity throughout the pipeline. We proactively promote a culture of inclusivity within our discipline and the broader STEM community. It is vital at any RSB event or meeting, that everyone attending is free from any form of harassment or discrimination, feels comfortable and safe, and has the opportunity for an enjoyable experience.