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MonashÃÉÄÉÊ¿´óѧ  ÕÐÊÕ¼ÆËãÉúÎïÐÅϢѧºÍҽѧ´óÊý¾Ý·ÖÎö·½Ïò²©Ê¿Ñо¿Éú  

[½»Á÷] ÃÉÄÉÊ¿´óѧÊý¾ÝδÀ´Ñо¿Ôº¡¢ÐÅÏ¢¹¤³Ìѧ²¿ºÍҽѧ²¿ÁªºÏÕÐÊÕ¼ÆËãÉúÎïÐÅϢѧºÍҽѧ´óÊý¾Ý·ÖÎö·½Ïò²©Ê¿Ñо¿Éú

Be a future thought leader - shape the future of artificial intelligence and data science for social good

ÃÉÄÉÊ¿Êý¾ÝδÀ´Ñо¿ÔºÈ«¶î£¨Ìṩѧ·Ñ¡¢Éú»î·Ñ¼°Ò½±££©²©Ê¿½±Ñ§½ðÏîÄ¿
Data futures institute between the faculty of information technology and faculty of medicine, Monash university


The Monash university data futures institute aims to develop outstanding critical thinkers with a deep understanding of social, scientific and policy issues paired with training in the use of advanced artificial intelligence (ai) and data science.

Students in this program become thought leaders at the intersection of data science, ai and the human experience. the skills acquired are transferable across education, corporate, and government sectors, enabling graduates to apply their training to a broad spectrum of career paths.

Look for PhD candidates with data-driven bioinformatics/machine learning/deep learning/ image processing/computer vision background. Applicants with related first-authored papers in cs/it/se or bioinformatics & computational biology or medical imaging are preferable.

Three PhD projects are available and sponsored by data futures strategic funding for 3.5 years (with the extension of further 3 months).


Project description:
1) This PhD project will develop cutting-edge data-driven computational approaches by combining big data, generative adversarial networks, deep learning, and aim to develop cutting-edge informatic approaches for predicting the antimicrobial phenotype (AMR) to existing antibiotic regimens of bacterial pathogens from genotypic data, particularly from the whole-genomic sequence, transcriptomic and proteomic data sets. This multi-disciplinary approach will be used to better combat pathogen-causing infectious diseases. Importantly, the projects will paradigm shift the current antibiotic discovery and development in the post-antibiotic resistance era.

2) This PhD project aims to combine cutting-edge machine learning and genome-wide association analysis (GWAS) and/or transcriptome-wide association analysis (TWAS) to quantitatively assesses and characterise the relative contributions of genetic risk factors, and protective factors, in modifying risk of disease in this population. Genetic variants (DNA changes) can result in increased risk of diseases like cancer, cardiovascular disease and dementia. However, some DNA changes can be protective, and reduce risk of such diseases. Protective genetic variants play an important role in reducing disease risk, and have informed the development of drug therapies, including for cardiovascular diseases. Analysing the genomes of the heathy individuals particular from the aging population will provide a unique opportunity to discover protective genetic variants. More specifically, PhD candidates with statistical and population genetics and/or machine learning/deep learning background are encouraged to apply.

3) This PhD project aims to develop state-of-the-art computational models to identify major molecular subtypes and patient prognosis of somatic cancers from histopathological image data, and perform benchmarking studies to validate the performance of the models using various deep learning architectures. as part of the preliminary analysis, we have completed data preparation, pre-processing and code debugging for processing H&E whole-slide images (WSIs). we will address these questions using high-performance GPU supercomputers (e.g. NVidia DGX-1 and another three in-house supercomputers with 12 GPUs) based on >40,000 whole-slide images. the models will be valuable for solid tumour diagnosis and individualized precision oncology.


Major: computer science, software engineering, information technology, bioinformatics and image processing, statistical and population genetics


PhD scholarship and stipend: Three PhD scholarships will be offered, which provide a highly competitive living stipend of $40,000 per annum for up to 3.5 years and a further $3,000 in travel support (in addition to up to $16,700 one-off health insurance and relocation expenses). In addition to these, highly competitive candidates will have the opportunity to work as the part-time Research Assistant or Teaching Assistant in Prof. Jiangning Song¡¯s Lab at the Monash Data Futures Institute and Monash Biomedicine Discovery Institute.

University ranking: Monash University is one of Australia¡¯s group of eight - the most research-intensive universities in the country - and positioned in the top 100 universities globally
(US News world: 40th; QS World: 58th; The Times world: 57th; CWTS Leiden World: 53th). top 2 QS world university rankings of Pharmacy & Pharmacology, Top 36 QS world university rankings of medicine. We have an international reputation for interdisciplinary research with an emphasis on global issues.


Application closes soon on 31th March 2022. Competitive candidates are encouraged to contact Prof Song directly via email by sending his/her CVs and publication lists:

Jiangning.Song@monash.edu


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