A Small Dataset May Go a Long Way: Process Duration Prediction in Clinical Settings
Tue 2 Dec 2025 15:30 - 16:00 at Sala Espositiva (Exhibition Hall) - Poster Session 1
Context: Utilization of operating theaters is a major cost driver in hospitals. Optimizing this variable through optimized surgery schedules may significantly lower cost and simultaneously improve medical outcomes. Previous studies proposed various complex models to predict the duration of procedures, the key ingredient to optimal schedules. They did so perusing large amounts of data. Goals: We aspire to create an effective and efficient model to predict operation durations based on only a small amount of data. Ideally, our model is also simpler in structure, and thus easier to use. Methods: We immerse ourselves in the application domain to leverage practitioners expertise. This way, we make the best use of our limited supply of clinical data, and may conduct our data analysis in a theory-guided way. We do a combined factor analysis and develop regression models to predict the duration of the perioperative process. Findings: We found simple methods of central tendency to perform on a par with much more complex methods proposed in the literature. In fact, they sometimes outperform them. We conclude that combining expert knowledge with data analysis may improve both data quality and model performance, allowing for more accurate forecasts. Conclusion: We yield better results than previous researchers by integrating conventional data science methods with qualitative studies of clinical settings and process structure. Thus, we are able to leverage even small datasets.
| PROFES_SmallDataLongWay_Hort_Stoerrle_2025-12-02 (PROFES_SmallDataLongWay_Hort_Stoerrle_2024-12-02.pdf) | 2.10MiB |
Tue 2 DecDisplayed time zone: Amsterdam, Berlin, Bern, Rome, Stockholm, Vienna change
11:30 - 13:00 | Artificial Intelligence and Analytics in Software EngineeringIndustry Papers / Research Papers / Short Papers and Posters at Sala degli Affreschi (Fresco Room) Chair(s): Antonio Martini University of Oslo, Norway | ||
11:30 15mTalk | Generating Business Process Models with Open Source Large Language Models using Instruction Tuning Research Papers Gökberk Çelikmasat Boğaziçi University, Atay Özgövde Boğaziçi University, Fatma Başak Aydemir Utrecht University | ||
11:45 15mTalk | Application of Large Language Models in Product Management: A Systematic Literature Review Research Papers Vitor Mori Eindhoven University of Technology (TU/e), Jan Bosch Chalmers University of Technology, Helena Holmström Olsson Malmö University | ||
12:00 15mTalk | Towards Understanding Team Congestion in Large-Scale Software Development Research Papers Javier Gonzalez-Huerta Blekinge Institute of Technology, Ehsan Zabardast Nordea / Blekinge Institute of Technology File Attached | ||
12:15 10mTalk | A Small Dataset May Go a Long Way: Process Duration Prediction in Clinical Settings Industry Papers File Attached | ||
12:25 7mTalk | Prompts as Software Engineering Artifacts: A Research Agenda and Preliminary Findings Short Papers and Posters Hugo Villamizar fortiss GmbH, Jannik Fischbach Netlight Consulting GmbH and fortiss GmbH, Alexander Korn University of Duisburg-Essen, Andreas Vogelsang paluno – The Ruhr Institute for Software Technology, University of Duisburg-Essen, Daniel Mendez Blekinge Institute of Technology and fortiss DOI File Attached | ||
12:32 7mTalk | MAPS-AI – A Tool for AI-Assisted Model-Driven Generation of IT Project Plan and Scope Short Papers and Posters Oksana Nikiforova Riga Technical University, Rihards Bobkovs Riga Technical University, Megija Krista Miļūne Riga Technical University, Kristaps Babris Riga Technical University, Oscar Pastor Universitat Politecnica de Valencia, Jānis Grabis Riga Technical University | ||
12:39 7mTalk | Cost of Artificial Intelligence in Finnish Software Companies: A Survey Short Papers and Posters Antti Klemetti University of Helsinki, Anssi Sorvisto University of Jyväskylä, Mikko Raatikainen University of Helsinki, Jukka K. Nurminen University of Helsinki File Attached | ||
12:46 7mTalk | Exploring the Performance of ML Model Size for Classification in Relation to Energy Consumption Short Papers and Posters Andreas Bexell Ericsson, Lo Heander Lund University, Emma Söderberg Lund University, Sigrid Eldh Ericsson AB, Mälardalen University, Carleton University, Per Runeson Lund University | ||
12:53 7mTalk | On the Use of Agentic Coding Manifests: An Empirical Study of Claude Code Short Papers and Posters Worawalan Chatlatanagulchai Kasetsart University, Kundjanasith Thonglek Kasetsart University, Brittany Reid Nara Institute of Science and Technology, Yutaro Kashiwa Nara Institute of Science and Technology, Pattara Leelaprute Kasetsart University, Arnon Rungsawang Kasetsart University, Bundit Manaskasemsak Kasetsart University, Hajimu Iida Nara Institute of Science and Technology File Attached | ||