Intelligent Sight and Sound: A Chronic Cancer Pain Dataset
- URL: http://arxiv.org/abs/2204.04214v1
- Date: Thu, 7 Apr 2022 22:14:37 GMT
- Title: Intelligent Sight and Sound: A Chronic Cancer Pain Dataset
- Authors: Catherine Ordun, Alexandra N. Cha, Edward Raff, Byron Gaskin, Alex
Hanson, Mason Rule, Sanjay Purushotham, James L. Gulley
- Abstract summary: This paper introduces the first chronic cancer pain dataset, collected as part of the Intelligent Sight and Sound (ISS) clinical trial.
The data collected to date consists of 29 patients, 509 smartphone videos, 189,999 frames, and self-reported affective and activity pain scores.
Using static images and multi-modal data to predict self-reported pain levels, early models show significant gaps between current methods available to predict pain.
- Score: 74.77784420691937
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Cancer patients experience high rates of chronic pain throughout the
treatment process. Assessing pain for this patient population is a vital
component of psychological and functional well-being, as it can cause a rapid
deterioration of quality of life. Existing work in facial pain detection often
have deficiencies in labeling or methodology that prevent them from being
clinically relevant. This paper introduces the first chronic cancer pain
dataset, collected as part of the Intelligent Sight and Sound (ISS) clinical
trial, guided by clinicians to help ensure that model findings yield clinically
relevant results. The data collected to date consists of 29 patients, 509
smartphone videos, 189,999 frames, and self-reported affective and activity
pain scores adopted from the Brief Pain Inventory (BPI). Using static images
and multi-modal data to predict self-reported pain levels, early models show
significant gaps between current methods available to predict pain today, with
room for improvement. Due to the especially sensitive nature of the inherent
Personally Identifiable Information (PII) of facial images, the dataset will be
released under the guidance and control of the National Institutes of Health
(NIH).
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