| Literature DB >> 31738170 |
Rena Brar Prayaga1, Ridhika Agrawal1,2, Benjamin Nguyen1,2, Erwin W Jeong3, Harmony K Noble4, Andrew Paster1, Ram S Prayaga1.
Abstract
BACKGROUND: Nonadherence among patients with chronic disease continues to be a significant concern, and the use of text message refill reminders has been effective in improving adherence. However, questions remain about how differences in patient characteristics and demographics might influence the likelihood of refill using this channel.Entities:
Keywords: Medicare patients; SMS; conversational AI; health disparities; machine learning; medication adherence; predictive modeling; refill adherence; social determinants of health; text messaging
Year: 2019 PMID: 31738170 PMCID: PMC6887813 DOI: 10.2196/15771
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Age of text messaging group.
| Age band (years) | Patients, n (%) | Reminders, n (%) |
| <60 | 6344 (6.39) | 20,883 (7.64) |
| 60-65 | 4502 (4.54) | 13,806 (5.05) |
| 65-70 | 29,600 (29.83) | 79,349 (29.03) |
| 70-75 | 27,201 (27.42) | 75,902 (27.77) |
| 75-80 | 15,039 (15.16) | 42,221 (15.44) |
| 80-85 | 7899 (7.96) | 22,247 (8.14) |
| >85 | 5458 (5.50) | 14,385 (5.26) |
| Unspecified | 3174 (3.20) | 4563 (1.67) |
| Total | 99,217 (100) | 273,356 (100) |
Race/ethnicity of text messaging group.
| Race/ethnicity | Patients, n (%) | Reminders, n (%) |
| White | 30,683 (30.93) | 81,544 (29.83) |
| Hispanic/Latino | 21,841 (22.01) | 67,266 (24.60) |
| Black/African American | 9124 (9.20) | 28,365 (10.38) |
| Asian | 8705 (8.77) | 23,870 (8.73) |
| Other/mixed | 1372 (1.38) | 3812 (1.39) |
| Unspecified/unknown | 27,492 (28.71) | 68,499 (25.06) |
| Total | 99,217 (100) | 273,356 (100) |
Figure 1Overview of message flow within refill dialogue.
Figure 2Conversion of refill reminder to refill request. DOB: date of birth.
Figure 3Refills requests by hour from initial reminder.
Figure 4Refill rates versus social determinants of health bands.
Refill request rate for text message group by social determinants of health level.
| Social determinants of health | Refill dialogues, N | Percent who responded, n (%) | Percent of responders who requested refill, n (%) |
| Low (0-52.8) | 124,423 | 47, 949 (38.54) | 23,623 (49.27) |
| Medium (52.8-86.1) | 94,489 | 30,755 (32.55) | 15,464 (50.28) |
| High (86.1-100) | 33,924 | 8532 (25.15) | 4357 (51.07) |
Figure 5Social determinants of health impact on response rates and percentage of responders who request refill. SDOH: social determinants of health.
Response and refill request rates by age.
| Age band (years) | Refill dialogues, N | Responded, n | Date of birth validation, n | Refills requested, n | Request rate, % |
| <60 | 20,883 | 9388 | 8929 | 5277 | 25.27 |
| 60-65 | 13,806 | 5444 | 5061 | 2808 | 20.34 |
| 65-70 | 79,349 | 29,625 | 27,787 | 15,014 | 18.92 |
| 70-75 | 75,902 | 25,707 | 23,949 | 12,458 | 16.41 |
| 75-80 | 42,221 | 127,732 | 11,781 | 6103 | 14.45 |
| 80-85 | 22,247 | 6256 | 5780 | 3039 | 13.66 |
| >85 | 14,385 | 4538 | 4242 | 2351 | 16.34 |
| Unspecified | 4563 | 1431 | 1364 | 501 | 10.98 |
| Total | 273,356 | 95,121 | 88,893 | 47,552 | 17.40 |
Response and refill request rates by race/ethnicity.
| Race/ethnicity | Refill dialogues, N | Responded, n | Date of birth validation, n | Refills requested, n | Request rate, % |
| Asian | 23,870 | 6695 | 6233 | 3296 | 13.81 |
| Hispanic/Latino | 67,266 | 16,700 | 15,430 | 8711 | 12.95 |
| Black/African American | 28,365 | 9476 | 8751 | 4678 | 16.50 |
| Other/mixed | 3812 | 1324 | 1216 | 652 | 17.10 |
| White | 81,544 | 34,134 | 32,181 | 16,557 | 20.30 |
Figure 6Impact of race/ethnicity on response rates and percentage of responders who request refill.
Figure 7Minimizing the number of false positives.
Counts of the type of responses that were handled by the conversational artificial intelligence (CAI).
| Role of CAI | Structured responses | Unstructured responses | Total, n (%) |
| Supported by CAI | 272,364 | 11,234 | 284,598 (92.23) |
| CAI could not handle | 3001 | 20,885 | 23,886 (7.77) |
| Total | 275,365 (89.55) | 32,119 (10.45) | 307,484 (100) |
Examples of unstructured patient messages when the conversational artificial intelligence successfully understood the message.
| Sample patient responses | Response category |
| “1-I only took this medication for 1 day and it caused great muscle pain. In the meantime my cholesterol levels are now below 200” | Side effect barrier |
| “1/2 tablet twice or thrice weekly. Changed on 6/25/18 due to recurring muscle pain and Dr XXXX concurred” | Side effect barrier |
| “Both kinds of pain. I can’t walk very far if i take too many so I’ve cut it to 1/4th and then when it geta to bad i stop it for a few days.” | Side effect barrier |
| “Caused pain on calvrs so bad i could not walk” | Side effect barrier |
| “Doctor took me off medication because of too much muscle pain” | Side effect barrier |
| “I cant take a Statin It gives me terrible muscle pain and I cant sleep !!!! No.” | Side effect barrier |
| “I have reported to my previous primary and his medical assistant...that the dosage prescribed gave me leg cramps and pain...I agreed to take half a pi” | Side effect barrier |
| “Do not have the money right now to fill it will refill it a when I have the funds” | Cost barrier |
| “Don’t have money right now” | Cost barrier |
| “Don’t have the extra money till the first.” | Cost barrier |
| “Don’t have the money yet to refill but plan on refilling soon” | Cost barrier |
| “Filling px on the military base at no cost” | Cost barrier |
| “1 (one)” | “1” |
| “1 (sent with Invisible Ink)” | “1” |
| “1 proceed to refill” | “1” |
| “1 refill” | “1” |
| “1-” | “1” |