IMPACT SCORE JOURNAL RANKING CONFERENCE RANKING Conferences Journals Workshops Seminars SYMPOSIUMS MEETINGS BLOG LaTeX 5G Tutorial Free Tools
KDD DSHealth Workshop 2023 : KDD DSHealth 2023: Workshop on Applied Data Science for Healthcare
KDD DSHealth Workshop 2023 : KDD DSHealth 2023: Workshop on Applied Data Science for Healthcare

KDD DSHealth Workshop 2023 : KDD DSHealth 2023: Workshop on Applied Data Science for Healthcare

Long Beach, CA
Event Date: August 06, 2023 - August 10, 2023
Submission Deadline: June 15, 2023
Notification of Acceptance: June 23, 2023




Call for Papers

KDD DSHealth 2023: Workshop on Applied Data Science for Healthcare
Applications and New Frontiers of Generative Models for Healthcare

# Call For Paper #

Generative models have a long history and there are many application areas in medical machine learning (ML) and artificial intelligence (AI). With the development in deep neural networks, researchers focused on Generative Adversarial Networks (GANs), Variational Autoencoders (VAEs), and autoregressive models in the past years. More recently, very large deep generative models have gained popularity, including the large language models (LLMs) such as Generative Pre-trained Transformer 3 (GPT-3) and text-to-image diffusion models such as Stable Diffusion. In healthcare research, one of the most common applications of generative models has been the generation of synthetic data for training of machine learning models. It is often used to increase representation of patient subgroups to improve generalization and mitigate algorithmic biases. This is especially valuable in application domains where data is hard to come by. The generative models can also be used for specific model evaluation purposes (e.g., within a robustness or generalizability assessment; virtual clinical trials). They can help to generate synthetic ground truth data when labeling of data is extremely burdensome. Moreover, generative models have been successfully applied in data preprocessing or enhancement, such as image reconstruction or denoising deep learning algorithms in the medical imaging space. While such generative models have proven their utility in the health domain, many open questions remain with regard to the approaches for evaluation of their effectiveness and safety. Testing and evaluation of such models require specific considerations. Taking the assessment of the gap between the generated data and the reality — so called Sim2Real challenge — as an example, it is often unclear how to (i) quantify this domain gap and its impact on downstream performance in a meaningful manner and (ii) reduce it in order to fully leverage the potential of generative models. New challenges are also emerging on a more grand scale. The recent advances in Large Language Models (LLMs) makes the generation of data even more effortless. However, the misinformation that is generated with such models may cause a “pollution” of data for future model training. We can expect an increased need for effective fact checking approaches. Despite the huge growth of this area of research, the actual use of NLP technology for fact checking is still in its infancy.

In this half day workshop we would like to discuss some of the most common applications of generative models in the ML/AI research in the healthcare domain, the current challenges and also explore what are the potential new areas of application.

## Submission Guidelines ##

We invite full papers, as well as work-in-progress on the application of data science in healthcare. Topics may include, but not limited to, the following topics (For more information see workshop webpage)

Papers must be submitted in PDF format to easychair (https://easychair.org/conferences/?conf=dshealth2023) and formatted according to the new Standard ACM Conference Proceedings Template. Authors are encouraged to use the Overleaf template (https://www.overleaf.com/latex/templates/acm-conference-proceedings-primary-article-template/wbvnghjbzwpc).

Papers must be a maximum length of 4 pages, excluding references.

The program committee will select the papers based on originality, presentation, and technical quality for spotlight and/or poster presentation.

## List of Topics ##

* Synthetic data
- Training data augmentation, e.g. in computer vision, medical imaging algorithm
- Physics- and Chemistry- based generative models
- Simulated data and privacy preserving algorithms 
- In-silico clinical trials
- Testing data, e.g. synthetic ground truth
- Generative AI for tabular data
- Interpretability
* Privacy and security of generative AI
- Inverse models for source verification
- Watermark for AI generated data
- Factual capabilities of generative AI
* Testing and evaluation of the generative models
- Sim2Real domain gap
- Data selection & quality aspects of the data (distribution shifts, monitoring of the models)
- Fact-checking
- Generating new healthcare-specific benchmarks
- Bias detection and mitigation in healthcare
- Reliability and trustworthiness of the generative models (actionable plans)
* Application of LLMs
- Systematic literature review
- Modernizing pharmaceutical call center operations
- Chatbot for patient registration, triage, scheduling, and rooming
- Semantic data augmentation
- Others
* Responsible use of Generative AI
- Generative AI Fairness and Bias detection
- Generative AI bias mitigation (e.g., adversarial training)
- Generative AI model transparency
- Generative AI ethics and responsible AI risk management
* Other
- Knowledge representation learning

## Organizing committee ##

Fei Wang, Cornell University, USA
Prithwish Chakraborty, IBM Research, USA
Tao Xu, F-Hoffmann la Roche, Switzerland
Pei-Yun Sabrina Hsueh, Bayesian Health Inc., USA
Gregor Stiglic, University of Maribor, Slovenia
Jiang Bian, University of Florida, USA
Lixia Yao, Merck, USA
Alexej Gossmann, FDA, USA
Florian Buettner, Frankfurt University/German Cancer Research Center (DKFZ), Germany

## Venue ##

The conference will be held as a half-day workshop in KDD 2023, Long beach, LA , on August 6, 2023.

Webpage: https://dshealthkdd.github.io/dshealth-2023/


Summary

KDD DSHealth Workshop 2023 : KDD DSHealth 2023: Workshop on Applied Data Science for Healthcare will take place in Long Beach, CA. It’s a 5 days event starting on Aug 6, 2023 (Sunday) and will be winded up on Aug 10, 2023 (Thursday).

KDD DSHealth Workshop 2023 falls under the following areas: ARTIFICIAL INTELLIGENCE, MACHINE LEARNING, DATA SCIENCE, HEALTHCARE, etc. Submissions for this Workshop can be made by Jun 15, 2023. Authors can expect the result of submission by Jun 23, 2023.

Please check the official event website for possible changes before you make any travelling arrangements. Generally, events are strict with their deadlines. It is advisable to check the official website for all the deadlines.

Other Details of the KDD DSHealth Workshop 2023

  • Short Name: KDD DSHealth Workshop 2023
  • Full Name: KDD DSHealth 2023: Workshop on Applied Data Science for Healthcare
  • Timing: 09:00 AM-06:00 PM (expected)
  • Fees: Check the official website of KDD DSHealth Workshop 2023
  • Event Type: Workshop
  • Website Link: https://dshealthkdd.github.io/dshealth-2023/
  • Location/Address: Long Beach, CA


Credits and Sources

[1] KDD DSHealth Workshop 2023 : KDD DSHealth 2023: Workshop on Applied Data Science for Healthcare


Check other Conferences, Workshops, Seminars, and Events


OTHER ARTIFICIAL INTELLIGENCE EVENTS

MAS-GAIN 2025: 1st International Workshop on Multi-Agent Systems using Generative Artificial INtelligence for Automated Software Engineering
Seoul, South Korea
Nov 16, 2025
ArIT 2025: 6th International Conference on Advances in Artificial Intelligence Techniques
Toronto, Canada
Jul 19, 2025
ICCAR 2026: 2026 12th International Conference on Control, Automation and Robotics (ICCAR 2026)
Nagoya, Japan
Apr 8, 2026
ICMAA--EI 2026: 2026 The 10th International Conference on Mechanical, Aeronautical and Automotive Engineering (ICMAA 2026)
Tokyo, Japan
Apr 1, 2026
ICSIE 2026: 2026 14th International Conference on Software and Information Engineering (ICSIE 2026)
Himeji, Japan
Jan 16, 2026
SHOW ALL

OTHER MACHINE LEARNING EVENTS

ArIT 2025: 6th International Conference on Advances in Artificial Intelligence Techniques
Toronto, Canada
Jul 19, 2025
ICSIE--EI 2026: 2026 14th International Conference on Software and Information Engineering (ICSIE 2026)
Himeji, Japan
Jan 16, 2026
ICoSSE--Ei 2026: 2026 9th International Conference on Software and System Engineering (ICoSSE 2026)
Lyon, France
Apr 13, 2026
ICHCSC 2025: 4th International Conference on Human-Centric Smart Computing (ICHCSC 2025)
Jaipur, India
Oct 10, 2025
CMLA 2025: 7th International Conference on Machine Learning & Applications
Toronto, Canada
Jul 19, 2025
SHOW ALL

OTHER DATA SCIENCE EVENTS

ICHCSC 2025: 4th International Conference on Human-Centric Smart Computing (ICHCSC 2025)
Jaipur, India
Oct 10, 2025
ICITA 2025: ICITA 2025 Summer symposium
Sydney, Australia
Aug 11, 2025
ICITA 2026: ICITA 2026: 20th International Conference on Information Technology and Applications
Sydney, Australia
Jul 2, 2026
CoGamy 2025: 1st Workshop on Computational Gastronomy: Data Science for Food and Cooking
Washington D.C.
Nov 12, 2025
DASFAA 2026: The 31st International Conference on Database Systems for Advanced Application
Jeju, South Korea
Apr 27, 2026
SHOW ALL

OTHER HEALTHCARE EVENTS

AIBTR 2025: 2nd International Conference on the Role of AI in Bio-Medical Translations’ Research for the HealthCare Industry
Nagpur, India
Nov 28, 2025
ML4H 2025: AHLI Machine Learning for Health Symposium
San Diego, CA
Dec 1, 2025
SCA 2025: THE 10th SMART CITY APPLICATIONS International Conference
Tangier, Morocco
Nov 11, 2025
WNCR 2025: the International Workshop on Nursing and Health Care Research (WNCR 2025)
online
Sep 28, 2025
HIIJ 2025: Health Informatics: An International Journal
N/A
SHOW ALL