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Spatial Transcriptomics Omics Jobs in Massachusetts

$53K - $72K/yr

... spatial transcriptomics and spatial proteomics) in the context of pre-clinical and multiple ... These datasets and multi-omics associations could help identify novel approaches for personalized ...

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Spatial Transcriptomics Omics information

What are the key skills and qualifications needed to thrive as a Spatial Transcriptomics Specialist, and why are they important?

To thrive as a Spatial Transcriptomics Specialist, you need a strong background in molecular biology, genomics, and bioinformatics, typically supported by an advanced degree in a relevant field. Familiarity with high-throughput sequencing platforms, spatial omics technologies, and data analysis tools like R or Python is essential, along with experience using laboratory automation systems. Attention to detail, problem-solving abilities, and effective interdisciplinary communication are crucial soft skills for this role. These skills ensure accurate experimental design, robust data interpretation, and successful collaboration in cutting-edge biological research.

What is the difference between Spatial Transcriptomics Omics vs Spatial Transcriptomics Technician?

AspectSpatial Transcriptomics OmicsSpatial Transcriptomics Technician
Required CredentialsAdvanced degrees (Master's/PhD) in molecular biology, genomics, or related fieldsAssociate's or Bachelor's degree in biology, biotechnology, or related fields
Work EnvironmentResearch labs, biotech companies, academic institutionsLaboratories, research facilities, biotech companies
Industry UsageResearch and development, data analysis, method developmentSample preparation, data collection, equipment operation

Spatial Transcriptomics Omics professionals focus on data analysis, method development, and research, often requiring advanced degrees. In contrast, Spatial Transcriptomics Technicians handle sample preparation and operate equipment, typically with a technical diploma or bachelor's degree. Both roles are essential in the spatial transcriptomics industry but differ in responsibilities and qualifications.

What are some common challenges faced by professionals in Spatial Transcriptomics Omics, and how can they be addressed?

Professionals working in Spatial Transcriptomics Omics often encounter challenges such as managing and interpreting large, complex datasets, integrating multi-omics data, and keeping pace with rapidly evolving technologies. Effective collaboration with bioinformaticians, pathologists, and laboratory technicians is essential to ensure high-quality results. Staying updated with the latest analytical tools and participating in cross-disciplinary training can help overcome these challenges and enhance both research quality and career growth.

What is spatial transcriptomics in omics research?

Spatial transcriptomics is a cutting-edge technology in the field of omics that allows researchers to measure and map gene expression within the spatial context of intact tissue sections. This means scientists can see which genes are active in specific locations of a tissue, preserving the spatial relationships between cells. By combining spatial information with transcriptomic data, researchers gain deeper insights into tissue organization, cellular interactions, and disease mechanisms. This approach is especially valuable for understanding complex tissues like tumors or brain structures.
What job categories do people searching Spatial Transcriptomics Omics jobs in Massachusetts look for? The top searched job categories for Spatial Transcriptomics Omics jobs in Massachusetts are:
What cities in Massachusetts are hiring for Spatial Transcriptomics Omics jobs? Cities in Massachusetts with the most Spatial Transcriptomics Omics job openings:
Infographic showing various Spatial Transcriptomics Omics job openings in Massachusetts as of June 2026, with employment types broken down into 100% Full Time. Highlights an 100% In-person job distribution.

Sr. Principal Scientist, Spatial Omics

Johnson & Johnson Innovative Medicine

Cambridge, MA • On-site

Full-time

Posted 24 days ago


Job description

Job Summary:
Johnson & Johnson Innovative Medicine is dedicated to healthcare innovation, aiming to prevent, treat, and cure complex diseases. The Senior Principal Scientist in Spatial Omics will drive advanced computational innovation across multimodal biological datasets, designing and applying AI/ML frameworks to extract insights from various biological data types, while leading the evolution of the computational ecosystem for therapeutic discovery.
Responsibilities:
• Develop and apply state‑of‑the‑art AI/ML, statistical, and computational frameworks to analyze genomics, transcriptomics, proteomics, metabolomics, single‑cell, and multi‑omics datasets.
• Lead the design and execution of spatial omics analyses at massive scale, integrating imaging‑based, sequencing‑based, and multiplexed spatial platforms to uncover tissue architecture, cellular neighborhoods, and microenvironmental dynamics.
• Build scalable pipelines to preprocess, QC, harmonize, and integrate terabyte‑ to petabyte‑scale spatial omics datasets, enabling discovery‑ready data layers and advanced modeling.
• Deploy, adapt and develop agent‑based models (ABM) to simulate cellular interactions, tissue‑level organization, and dynamic biological processes, incorporating outputs from multimodal omics and spatial measurements.
• Fuse mechanistic models with ML/AI frameworks to generate hybrid predictive systems for target discovery, perturbation response, and disease progression modeling.
• Deploy and create novel ML architectures, including deep learning, generative models, graph neural networks, and causal inference frameworks that are tailored for biological complexity.
• Design and implement scalable algorithms for high‑dimensional, multimodal integration of spatial, molecular, and phenotypic data.
• Prototype and benchmark cutting‑edge computational approaches, pushing the frontier of in silico biological inference.
• Map, influence, and guide the development of computational and data architecture needed to support next‑generation omics and ML workloads.
• Partner with data engineering and platform teams to define standards for data ingestion, modeling workflows, metadata management, and reproducible research ecosystems.
• Ensure infrastructure supports large‑scale distributed training, complex spatial analytics, cloud‑native computation, and long‑term model governance.
• Act as a senior scientific authority, shaping strategy and guiding decision‑making across discovery and platform innovation, without direct people management.
• Provide high‑level technical mentorship, scientific critique, and modeling guidance to colleagues and collaborators.
• Drive cross‑disciplinary project teams by defining computational strategy, interpreting results, and ensuring scientific rigor.
• Deliver insights that advance target identification, mechanism‑of‑action exploration, pathway modeling, biomarker discovery, and patient stratification.
• Translate computational discoveries into actionable biological hypotheses, experimental designs, and portfolio‑impacting recommendations.
• Communicate findings effectively to scientific and strategic stakeholders.
Qualifications:
Required:
• Education: Minimum of a Ph.D. in Computational Biology, Bioinformatics, Computer Science, Statistical Genetics, Systems Biology, Applied Mathematics/Physics, or a related quantitative discipline.
• Minimum of 9 years of post‑doctoral, industry or academic experience applying advanced computational, statistical, and machine‑learning methods to biological problems.
• Deep expertise across multiple omics modalities, including genomics, transcriptomics, proteomics, metabolomics, and spatial omics (e.g., spatial transcriptomics, multiplexed imaging, spatial proteomics).
• Demonstrated ability to analyze, integrate, and interpret very large‑scale, multimodal datasets (multi‑TB to PB scale), including the design of scalable pipelines and distributed computation strategies.
• Expert‑level proficiency in modern ML/AI frameworks, such as PyTorch, TensorFlow, JAX, scikit‑learn, and deep‑learning architectures relevant to biological modeling.
• Strong background in agent‑based modeling, systems biology modeling, or hybrid mechanistic‑ML modeling frameworks.
• Proven ability to design and influence data and computational architectures, including experience working with cloud‑native analytical ecosystems (Azure, AWS, or GCP) and large‑scale data engineering workflows.
• Demonstrated scientific leadership as an individual contributor, including the ability to independently drive complex research programs, set technical direction, and influence cross‑functional strategy.
• A strong publication record in high‑impact journals or top‑tier ML/AI conferences, reflecting innovation in computational biology or applied machine learning.
• Proficiency in Python and experience with scientific computing libraries (NumPy, SciPy, pandas) and workflow orchestration tools.
Preferred:
• Big Data Management
• Data Reporting
• Data Savvy
• Drug Discovery Development
• Molecular Diagnostics
• Pharmaceutical Microbiology
• Problem Solving
• Product Development
• Product Knowledge
• Project Reporting
• Research Proposals
• Scientific Research
• Standard Operating Procedure (SOP)
• Strategic Thinking
• Sustainability
• Tactical Planning
• Technical Credibility
Company:
Johnson and Johnson Innovative Medicine focuses on developing medical solutions for some of the challenging diseases and medical conditions. Founded in , the company is headquartered in Raritan, USA, with a team of 10001+ employees. The company is currently Late Stage.