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| ID | Type | Description | Link |
|---|---|---|---|
| 20-C-0130 |
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Background:
Cancer pain can have a very negative effect on people s daily lives. Researchers want to use machine learning to detect facial expressions and voice signals. They want to help people with cancer by creating a model to measure pain. They want the model to reflect diverse faces and facial expressions.
Objective:
To find out whether facial recognition technology can be used to classify pain in a diverse set of people with cancer. Also, to find out whether voice recognition technology can be used to assess pain.
Eligibility:
People ages 12 and older who are undergoing treatment for cancer
Design:
Participants will be screened with:
Cancer history
Information about their sex and skin type
Information about their access to a smart phone and wireless internet
Questions about their cancer pain
Participants will have check-ins at the clinic and at home. These will occur over about 3 months. They will have 2-4 check-ins at the clinic. They will check in at home about 3 times per week.
During check-ins, participants will answer questions and talk about their cancer pain. They will use a mobile phone or a computer with a camera and microphone to complete a questionnaire. They will record a video of themselves reading a 15-second passage of text and responding to a question.
During the clinic check-ins, professional lighting, video equipment, and cameras will be used for the recordings.
During remote check-ins, participants will be asked to complete the questionnaire and recordings alone. They should be in a quiet and bright room. The room should have a white wall or background.
Background:
Objectives:
-The primary objective of this study is to determine the feasibility of using facial recognition technology to classify cancer/tumor related pain in a demographically diverse set of participants with cancer/tumors who are receiving standard of care or investigational treatment for their cancer/tumor.
Eligibility:
Design:
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| Label | Type | Description | Intervention Names |
|---|---|---|---|
| 1DF/NoPain_IV-VI_Female | Worst pain in past month = 0; Skin Type IV-VI, Female | ||
| 1DM/NoPain_IV-VI_Male | Worst pain in past month = 0; Skin Type IV-VI, Male | ||
| 1LF/NoPain_I-III_Female | Worst pain in past month = 0; Skin Type I-III, Female | ||
| 1LM/NoPain_I-III_Male | Worst pain in past month = 0; Skin Type I-III, Male | ||
| 2DF/MildPain_IV-VI_Female | Worst pain in past month = 1-3; Skin Type IV-VI, Female | ||
| 2DM/MildPain_IV-VI_Male | Worst pain in past month = 1-3; Skin Type IV-VI, Male | ||
| 2LF/MildPain_I-III_Female | Worst pain in past month = 1-3; Skin Type I-III, Female | ||
| 2LM/MildPain_I-III_Male |
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| Measure | Description | Time Frame |
|---|---|---|
| Feasibility of using facial recognition technology to classify pain | The primary objective of this study is to determine the feasibility of using facial recognition technology to classify pain in a demographically diverse set of patients with cancer/tumor who are participating on a clinical trial. | 3 months |
| Measure | Description | Time Frame |
|---|---|---|
| To determine the feasibility of using voice recognition technology | Voice recognition technology | 3 months |
| To transcribe patient video responses to assess pain using free-text | Video responses to assess pain using free-text |
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INCLUSION CRITERIA:
service providers.
EXCLUSION CRITERIA:
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Patients with histologically or cytologically proven cancer or tumor
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| Name | Affiliation | Role |
|---|---|---|
| James L Gulley, M.D. | National Cancer Institute (NCI) | Principal Investigator |
| Facility | Status | City | State | ZIP | Country | Contacts |
|---|---|---|---|---|---|---|
| National Institutes of Health Clinical Center | Bethesda | Maryland | 20892 | United States |
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| Label | URL |
|---|---|
| NIH Clinical Center Detailed Web Page | View source |
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All IPD recorded in the medical record will be shared with intramural investigators upon request.
Clinical data available during the study and indefinitely.
Clinical data will be made available via subscription to BTRIS and with the permission of the study PI.
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| ID | Term |
|---|---|
| D009369 | Neoplasms |
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Worst pain in past month = 1-3; Skin Type I-III, Male |
| 3DF/ModPain_IV-VI_Female | Worst pain in past month = 4-6; Skin Type IV-VI, Female |
| 3DM/ModPain_IV-VI_Male | Worst pain in past month = 4-6; Skin Type IV-VI, Male |
| 3LF/ModPain_I-III_Female | Worst pain in past month = 4-6; Skin Type I-III, Female |
| 3LM/ModPain_I-III_Male | Worst pain in past month = 4-6; Skin Type I-III, Male |
| 4DF/SeverePain_IV-VI_Female | Worst pain in past month = 7-10; Skin Type IV-VI, Female |
| 4DM/SeverePain_IV-VI_Male | Worst pain in past month = 7-10; Skin Type IV-VI, Male |
| 4LF/SeverePain_I-III_Female | Worst pain in past month = 7-10; Skin Type I-III, Female |
| 4LM/SeverePain_I-III_Male | Worst pain in past month = 7-10; Skin Type I-III, Male |
| 3 months |
| To determine the feasibility of combining RGB and thermal images with voice recognition transcribed verbal responses | RGB and thermal images | 3 months |
| To use natural language processing algorithms to assess pain | Natural language processing algorithms to assess pain | 3 months |