OBIO Job Board and Talent Network™️

Connect with highly skilled talent in the health science industry.

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Data Scientist/Machine Learning Scientist in Medical Imaging
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TORONTO: RESEARCH AND DEVELOPMENT - FULL TIME
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Job Description
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Oncoustics is revolutionizing the use of point of care ultrasound in liver care through advanced AI. We are supported by high-profile institutional investors and have deep partnerships in place with several major ultrasound and pharmaceutical players. We are looking to hire an experienced ML Engineer/Data Scientist to join our team with relevant academic experience and industry experience. A successful candidate will be able to lead projects, as well as coordinating with signal processing, clinical data and product teams. The candidate should be able to build on previous work, and have a collaborative team spirit. Specifics of the opportunity include:
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Responsibility
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  • Carry out data science/statistical analysis of our large data libraries for feature engineering and accounting for unique trends
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  • Carry out bio-statistical planning for clinical trials and clinical research - for IRBs and FDA regulatory submissions
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  • Work on development and deployment of deep learning and machine learning models in scikit-learn, tensorflow and pytorch
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  • Design models/learning strategies to optimize mining of unique ultrasound signal data with deep learning
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  • Work directly with teams of data scientists, signal processing engineers, clinicians and clinical providers, and product deployment
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  • Influence feature engineering and signal processing, and coordinate for optimal mining of data
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  • Remain aware of new innovations in the use of AI/ML in medical imaging and ultrasound
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  • Adopt state of the art algorithms
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  • Participate in FDA planning and clearance of algorithms
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Requirements
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  • Graduate degree in a related field, and relevant undergraduate
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  • 2+ years at least of industry experience in data science and AI/ML for health care
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  • Expertise in Python for Machine Learning packages: Pandas, Sklearn, Keras, Tensorflow, Pytorch
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  • Experience in biostatistics, statical performance metrics and testing methods in health care clinical trials and clinical research
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Good To Have
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  • PhD/graduate work in biostatistics, data science and machine learning/machine vision
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  • Expertise in medical imaging analysis or signal processing
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  • Experience in the use of ultrasound
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  • Prior experience with FDA clearance of AI/ML algorithms
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© Copyright Oncoustics. All Rights Reserved
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\n\n","datePosted":"2022-11-03T13:28:45.065Z","validThrough":"2024-09-18","employmentType":[],"hiringOrganization":{"@type":"Organization","name":"Oncoustics AI","description":"Oncoustics is creating and deploying advanced AI solutions for low cost, non-invasive surveillance, diagnostics, and treatment monitoring of diseases with high unmet clinical need. Unlike other players in the space, Oncoustics does not do image recognition. Instead, Oncoustics applies AI to raw ultrasound signals from readily available handheld ultrasound devices to rapidly differentiate healthy versus diseased tissues. There's a wealth of information in these raw signals and this approach reveals novel biomarkers that can be aligned with existing standards and categorization systems. Initially targeting liver disease, a $30B global diagnostic market, Oncoustics has filed a Breakthrough Device Designation Request with the FDA for the OnX that detects liver fibrosis and the 510K is underway. Several follow-on liver products are in development. Oncoustics also has clinical data on other organ indications including prostate, kidney, breast and thyroid diseases and cancers.","numberOfEmployees":29,"address":[{"address":{"@type":"PostalAddress","addressLocality":"Toronto, ON, Canada"}},{"address":{"@type":"PostalAddress","addressLocality":"North York, Toronto, ON, Canada"}}],"sameAs":"https://oncoustics.com","url":"https://oncoustics.com","logo":"https://cdn.getro.com/companies/3d60cba1-74be-5da2-8fa4-6b131b3d2dc3","memberOf":{"@type":"Organization","name":"Ontario Bioscience Innovation Organization ","description":"The Ontario Bioscience Innovation Organization (OBIO) is a not-for-profit, membership-based organization engaged in the development of an integrated health innovation economy for Ontario and one that will become a global leader in providing health technology products and services to the international marketplace. OBIO advances this goal through advocacy, promotion and strategic leadership and via collaborative partnerships with industry, academia, patients and government.","logo":"https://cdn.filepicker.io/api/file/RG9Vq27ToukLhfQpstbe","url":"careers.obio.ca"},"keywords":"Biotechnology, Data and Analytics, DeepTech, Health, Software"},"jobLocation":{"@type":"Place","address":{"@type":"PostalAddress","addressLocality":"Toronto, ON, Canada"}}}

Data Scientist/Machine Learning Scientist in Medical Imaging

Oncoustics AI

Oncoustics AI

Software Engineering, Data Science
Toronto, ON, Canada
Posted on Thursday, November 3, 2022
Data Scientist/Machine Learning Scientist in Medical Imaging
TORONTO: RESEARCH AND DEVELOPMENT - FULL TIME
Job Description
Oncoustics is revolutionizing the use of point of care ultrasound in liver care through advanced AI. We are supported by high-profile institutional investors and have deep partnerships in place with several major ultrasound and pharmaceutical players. We are looking to hire an experienced ML Engineer/Data Scientist to join our team with relevant academic experience and industry experience. A successful candidate will be able to lead projects, as well as coordinating with signal processing, clinical data and product teams. The candidate should be able to build on previous work, and have a collaborative team spirit. Specifics of the opportunity include:
Responsibility
  • Carry out data science/statistical analysis of our large data libraries for feature engineering and accounting for unique trends
  • Carry out bio-statistical planning for clinical trials and clinical research - for IRBs and FDA regulatory submissions
  • Work on development and deployment of deep learning and machine learning models in scikit-learn, tensorflow and pytorch
  • Design models/learning strategies to optimize mining of unique ultrasound signal data with deep learning
  • Work directly with teams of data scientists, signal processing engineers, clinicians and clinical providers, and product deployment
  • Influence feature engineering and signal processing, and coordinate for optimal mining of data
  • Remain aware of new innovations in the use of AI/ML in medical imaging and ultrasound
  • Adopt state of the art algorithms
  • Participate in FDA planning and clearance of algorithms
Requirements
  • Graduate degree in a related field, and relevant undergraduate
  • 2+ years at least of industry experience in data science and AI/ML for health care
  • Expertise in Python for Machine Learning packages: Pandas, Sklearn, Keras, Tensorflow, Pytorch
  • Experience in biostatistics, statical performance metrics and testing methods in health care clinical trials and clinical research
Good To Have
  • PhD/graduate work in biostatistics, data science and machine learning/machine vision
  • Expertise in medical imaging analysis or signal processing
  • Experience in the use of ultrasound
  • Prior experience with FDA clearance of AI/ML algorithms
Uploading...
fileuploaded.jpg
Upload failed. Max size for files is 10 MB.
Are you eligible to work in Canada?
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.