Explainable Spatial Clustering: Leveraging Spatial Data in Radiation
Oncology
- URL: http://arxiv.org/abs/2008.11282v2
- Date: Tue, 20 Oct 2020 21:38:25 GMT
- Title: Explainable Spatial Clustering: Leveraging Spatial Data in Radiation
Oncology
- Authors: Andrew Wentzel, Guadalupe Canahuate, Lisanne van Dijk, Abdallah
Mohamed, Clifton David Fuller, G.Elisabeta Marai
- Abstract summary: We reflect on the design of visualizations for explaining novel approaches to clustering complex anatomical data from head and neck cancer patients.
These visualizations were developed, through participatory design, for clinical audiences during a multi-year collaboration with radiation oncologists and statisticians.
- Score: 3.2638612423470934
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Advances in data collection in radiation therapy have led to an abundance of
opportunities for applying data mining and machine learning techniques to
promote new data-driven insights. In light of these advances, supporting
collaboration between machine learning experts and clinicians is important for
facilitating better development and adoption of these models. Although many
medical use-cases rely on spatial data, where understanding and visualizing the
underlying structure of the data is important, little is known about the
interpretability of spatial clustering results by clinical audiences. In this
work, we reflect on the design of visualizations for explaining novel
approaches to clustering complex anatomical data from head and neck cancer
patients. These visualizations were developed, through participatory design,
for clinical audiences during a multi-year collaboration with radiation
oncologists and statisticians. We distill this collaboration into a set of
lessons learned for creating visual and explainable spatial clustering for
clinical users.
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