Text Messaging in Cancer-Supportive Care: A Systematic Review
Abstract
:Simple Summary
Abstract
1. Introduction
2. Materials and Methods
2.1. Eligibility Criteria
2.2. Search Strategy
2.3. Data Extraction and Outcome Measures
2.4. Bias Assessment
3. Results
3.1. Overview
3.2. Risk of Bias
3.3. Patient Satisfaction
3.4. Barriers to the Use of Text-Based Communication
3.5. Symptom Outcomes
3.6. Quality of Life Outcomes
3.7. Feasibility and Implementation Outcomes
4. Discussion
Strengths and Limitations
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Author, Year (Country) | Study Design | Study Population, Sample Size (I vs. C) | Intervention vs. Control Description | Follow-Up |
---|---|---|---|---|
Randomized Trials | ||||
Casillas, 2019 (United States) [26] | RCT (three-armed, parallel, prospective, single-center) | Adolescent and young adult childhood cancer survivors, 28 vs. 25 vs. 25 | All groups received an education booklet and identified 3 survivorship goals. Text message group: two-way texting system that supported engagement and provided resources for achieving goals vs. Peer navigation group: telephone calls to discuss goals vs. Control group: encouraged to seek answers to questions regarding educational material | 2 mos |
Gomersall, 2019 (Australia) [27] | RCT (two-armed, parallel, prospective, single-center) | Cancer patients at least one month post-surgery, 18 vs. 18 | 4 wk exercise rehabilitation program + 12 wk tailored text messages designed to improve whole-of-day activity vs. 4 wk exercise rehabilitation program | 3 mos |
Haggerty, 2017 (United States) [28] | RCT (three-armed, parallel, prospective, multi-center) | Women with a history of endometrial cancer, BMI 30+, no current or planned treatments, 13 vs. 14 vs. 15 | Text message group: 3–5 daily personalized interactive text messages (feedback, support, strategies for behavioral change regarding weight loss) vs. Telemonitoring group: weekly/biweekly telephone counselling vs. Control group: paper handouts on healthy eating and exercise | 6 mos |
Hershman, 2020 (United States) [29] | RCT (two-armed, parallel, prospective, multi-center) | Post-menopausal women with breast cancer (stage I–III) taking a third-generation aromatase inhibitor, 348 vs. 354 | Twice-weekly educational text messages focusing on barriers to medication adherence vs. no text messaging | 3 yrs |
Rico, 2020 (Brazil) [30] | RCT (two-armed, parallel, prospective, single-center) | Outpatients undergoing chemotherapy, 59 vs. 59 | Daily text messages on prevention of side effects and emotional support, sent automatically in conjunction with cHEmotHErApp vs. standard care | 10 mos |
Spoelstra, 2016 (United States) [34] | RCT (two-armed, parallel, prospective, multi-center) | Patients newly prescribed OA, 49 vs. 26 | Daily medication adherence text messages (based on social cognitive theory, 6 used on a rotating basis) vs. standard care | 9 wks |
Spoelstra, 2015 (United States) [33] | RCT (two-armed, parallel, prospective, multi-center) | Patients newly prescribed OA, 40 vs. 40 | Daily medication adherence text messages (based on social cognitive theory, 6 used on a rotating basis) + weekly symptom management text messages vs. standard care | 9 wks |
Tan, 2020 (Singapore) [31] | RCT (two-armed, parallel, prospective, multi-center) | Breast cancer patients prescribed AET for at least one year, 123 vs. 121 | Weekly text message reminders to take anti-cancer medication vs. standard care | 1 yr |
Villaron, 2018 (France) [32] | RCT (two-armed, parallel, prospective, single-center) | Outpatients undergoing chemotherapy, 21 vs. 22 | Motivational text messages sent at the beginning of each week + physical activity recommendation guide vs. no text messages or recommendation guide | 2 mos |
Non-Randomized Interventional/Observational Studies | ||||
Bade, 2018 (United States) [35] | Comparative | Advanced-stage (III or IV) lung cancer before, during or after treatment, 15 vs. 29 | Twice-daily personalized text messages regarding activity goals (weekly activity goal, current step count, and motivational statements) for 12 wks vs. weekly phone calls to discuss activity goals | 1 mos |
Chow, 2019 (United States) [36] | Single arm observational | Receiving active cancer treatment (chemotherapy), 52 | Text message invitation to complete a web-based distress screener one per week for 4 wks (no control group) | 1 mos |
Krok-Schoen, 2019 (United States) [11] | Pre-post | Post-menopausal women with breast cancer (stage 0–III) receiving hormone therapy for the first time, 39 | Daily text message reminders to take hormone therapy medication + weekly text message to prompt completion of medication adherence survey within a mobile app vs. same sample at baseline | 3 mos |
Maguire, 2015 (United Kingdom) [37] | Mixed methods | Lung cancer patients receiving thoracic radiotherapy, 16 | Completed daily symptom questionnaires, data sent in real time to a central study server and an integrated risk model analyzed and reported symptoms. The server then generated alerts to a pager held by a health professional at the clinic (no control group) | ≥1 mos |
Mougalian, 2017 (United States) [38] | Pilot | HR-positive breast cancer patients (stage I–III) recommended adjuvant hormonal therapy (follow-up) 100 vs. 100 | Interactive daily medication reminders, weekly AE questions, and monthly texts regarding barriers to adherence (any alerts generated were forwarded to the clinical team) vs. standard care (set of historical controls using medical records) | 3 mos |
Rico, 2017 (Brazil) [39] | Single arm Pilot | Outpatients undergoing chemotherapy, 14 | Daily text messages promoting self-care and emotional support, sent automatically in conjunction with cHEmotHErApp (no control group) | 1 mos |
Sawicki, 2019 (United States) [40] | Retrospective cohort | Patients initiated on TKI therapy (follow-up), 279 vs. 279 | Interactive text messages on lab testing, adherence to prescribed therapy, symptoms and side effects, and condition-specific management guidance (with links to request a consultation) + non-interactive medication refill reminders vs. non-interactive medication refill reminders | 1 yr |
Tan, 2019 (United States) [41] | Retrospective cohort | Cancer patients undergoing radiation therapy, 668 vs. 2761 | Text messaging platform connected to medical records, sent appointment reminders 2 hours prior vs. no reminders | 7 mos |
Wells, 2020 (United Kingdom) [42] | Mixed methods | Cancer patients receiving treatment and having mild- moderate clinical anxiety and/or depressive symptoms, 30 vs. 21 | MBCT intervention focused on mindfulness skills + text message reminders (reminded patients of home practice, info from previous sessions, upcoming sessions) vs. MBCT intervention (opted out of text messaging service) | 1 mos |
Author, Year | Patient Satisfaction Outcomes a | Barrier Outcomes b |
---|---|---|
Randomized Trials | ||
Gomersall, 2019 [27] | Mean satisfaction with text messages was 4.1 SD 1.1 (n = 17, scores could range from 1–5) | All intervention patients attended both tailoring sessions and received text messages for the first 4 weeks of the program, however 4 participants opted out from receiving texts for the last 8 weeks (reasons included: n = 1 sufficiently self-motivated to continue without texts, n = 1 not finding texts useful, n = 1 overseas travel, n = 1 not liking the directive language of the texts) |
Rico, 2020 [30] | 72.1% reported being very satisfied | |
Spoelstra, 2016 [34] | 92% reported satisfaction (very much/highly satisfied) | 5.3% encountered problems with the text message system |
Spoelstra, 2015 [33] | All were somewhat (n = 2) or highly (n = 35) satisfied with their participation in the study | 7/37 encountered a problem with automated voice recordings, 1/36 encountered a problem with texts |
Tan, 2020 [31] | Overall most patients agreed that text messages were easy to understand (99.2%) | |
Non-Randomized Interventional/Observational Studies | ||
Bade, 2018 [35] | 92% of patients found intervention helpful (out of n = 13) | |
Chow, 2019 [36] | Mean USE scale score was 6.9/7 for ease of use, 6.9/7 (SD 0.4) for ease of learning, and 6.5/7 (SD 0.3) for satisfaction | |
Krok-Schoen, 2019 [11] | 97.3% of patients reported a positive experience (out of n = 37) | 12/39 did not complete the intervention for the following reasons: being busy, not feeling well, or forgetfulness |
Maguire, 2015 [37] | All patients agreed the handset helped them manage symptoms and communicate with the physician/nurses | 100% reported that they encountered problems in using the handset |
Mougalian, 2017 [38] | 73% of respondents reported that the text messages helped them take their medication either very much or quite a lot. | 4.7% of respondents felt the intervention took up too much time |
Rico, 2017 [39] | n = 15 reported being satisfied or very satisfied | |
Wells, 2020 [42] | Of the 13 patients who used smart messaging and were interviewed found smart messages to be a prompt and reminder, some also found it motivating or drew patients back to mindfulness, second theme of personal connection was found (i.e., “someone is thinking about me”) even when patient knew the message wasn’t personally sent | Two patients explained opting out due to lack of confidence in mobile phones |
Author, Year | Symptom Outcomes a | QoL Outcomes b |
---|---|---|
Randomized Trials | ||
Gomersall, 2019 [27] | Mean change score (Week 12-Week 4) for time prolonged sitting (min/16 h awake) in I vs. C: −24.4, 95% CI −47.7, −1.1 (within-group p = 0.04) vs. 0.0, 95% CI −24.8, 24.7 (within-group p = 1) | |
Haggerty, 2017 [28] | Median 6-month change score for SF-12 physical health component in I vs. C1 vs. C2: 0.9 IQR −0.7–4.8 (n = 11) vs. 5.4 IQR 3.8–15.0 (n = 11) vs. 7.4 IQR 1.8–11.0 (n = 10); p = 0.04 between I and C1; Median 6-month change score for Multidimensional Body Self Relations Questionnaire-Appearance subscale in I vs. C1 vs. C2: 0.0 IQR −1.0, 0.0 (n = 11) vs. −3.5 IQR −5.0, −1.0 (n = 11) vs. −0.5 IQR 1.5, 0 (n = 10); p = 0.035 between I and C1 | |
Rico, 2020 [30] | Number of patients experiencing side effects experienced in cycle 3, I vs. C: 0–3 side effects 19 vs. 15, 4–14 side effects 24 vs. 29, p = 0.38 | |
Spoelstra, 2016 [34] | Mean total number of symptoms in I vs. C: 4.9 SD 0.4 vs. 5.2 SD 0.6, p = 0.7 (ES 0.09) | Mean PROMIS Physical function score in I vs. C: 45.7 SD 0.9 vs. 45.7 SD 1.3, p = 0.99 (ES 0); Mean PROMIS Depression score in I vs. C: 44.6 SD 1.0 vs. 44.2 SD 1.3, p = 0.8 (ES 0.06) |
Spoelstra, 2015 [33] | Mean total number of symptoms in I vs. C: 3.9 SD 0.5 vs. 5.3 SD 0.5, p = 0.04 (ES 0.5) | Mean PROMIS Physical function score in I vs. C: 47.6 SD 1.2 vs. 44.9 SD 1.1, p = 0.1 (ES 0.4); Mean PROMIS Depression score in I vs. C: 44.7 SD 1.3 vs. 44.9 SD 1.2, p = 0.9 (ES 0.03) |
Villaron, 2018 [32] | Mean QLQ-30 Physical capacity score at Week 8 in I vs. C: 88.2 SD 13.6 vs. 83.6 SD 12.7, p = 0.3; Mean MFI-20 Mental fatigue score at Week 8 in I vs. C: 6.9 SD 3.8 vs. 10.0 SD 4.2, p < 0.05 | |
Non-Randomized Interventional/Observational Studies | ||
Bade, 2018 [35] | Mean daily step count Week 0 vs. Week 3: I group (n = 15) 4906.1 SD 256.8 vs. 5241.2 SD 291.7 (ES 0.02); C group (n = 22) 5128.2 SD 223.7 vs. 5247.2 SD 242.9 (ES 0.05) | |
Chow, 2019 [36] | Mean PHQ-4 score was 1.7 SD 2.3 (n = 9 reported at least a moderate level of distress ≥ 6 at any point) | |
Krok-Schoen, 2019 [11] | Mean Breast Cancer Prevention Trial Symptom Checklist score not significantly different between I vs. C (n = 37): 0.8 SD 0.5 vs. 0.7 SD 0.5, MD (I–C) 0.04, 95% CI −0.06, 0.1, p = 0.4 | Mean SF-8 physical health component score I vs. C (n = 36): 46.4 SD 10.6 vs. 45.4 SD 10.3, MD (I–C) 1.0, 95% CI −1.7, 3.6, p = 0.4; Mean SF-8 mental health component score I vs. C (n = 36): 53.0 SD 6.5 vs. 49.9 SD 7.8, MD (I–C) 3.0, 95% CI 0.9, 5.1, p = 0.007 |
Maguire, 2015 [37] | Median ESAS nausea score in I vs. C (n = 16): 2, range 0–6 vs. 0, range 0–8 | Median ESAS depression score in I vs. C (n = 16): 0, range 0–8 vs. 0, range 0–8 |
Mougalian, 2017 [38] | Number of patients reporting any symptoms for Tamoxifen patients vs. AI patients vs. all patients: 35 vs. 56 vs. 91 (p = 0.20 for Tamoxifen vs. AI patients) | |
Wells, 2020 [42] | Depression (PHQ-9) reduced by 2.3 points (95% CI: 0.76–3.89) p = 0.004 |
Author, Year | Feasibility Outcomes a |
---|---|
Randomized Trials | |
Casillas, 2019 [26] | Mean survivorship care knowledge scale total score (range 1–5) in I vs. C1 vs. C2: 3.8 SD 0.9 pre, 4.2 SD 0.8 post (within-group p < 0.05) vs. 4.0 SD 0.9 pre, 4.1 SD 0.8 post (within-group p = 0.38); 3.5 SD 0.8 pre, 3.4 SD 0.6 post (within-group p = 0.67), p < 0.05 for I vs. C2 (ES 0.7), p = 0.07 (ES 0.3) for C1 vs. C2 |
Gomersall, 2019 [27] | 83% (n = 31) of patients attended all four exercise sessions |
Hershman, 2020 [29] | Medication adherence failure (based on urine samples, accounting for censoring) in I vs. C: total 283 vs. 303 events, HR 0.9, 95% CI 0.8, 1.1, p = 0.2 |
Rico, 2020 [30] | 52 text messages were sent from day 1 to the beginning of cycle 4 |
Spoelstra, 2016 [34] | Mean adherence to OA in I vs. C: 6.5 SD 0.4 vs. 7.2 SD 0.5, p = 0.3 (ES 0.3) |
Spoelstra, 2015 [33] | Overall mean adherence in I vs. C: 6.0 SD 0.5 vs. 6.0 SD 0.5, p = 1 (ES 0); 1359 texts were sent to patients (1111 adherence, 116 symptom management, 52 additional, 53 welcome and 17 end of study) |
Tan, 2020 [31] | SMAQ adherence in I vs. C vs. All: 52.0% vs. 54.6% vs. 53.3% |
Villaron, 2018 [32] | Survey compliance was 64.6% |
Non-Randomized Interventional/Observational Studies | |
Bade, 2018 [35] | Number of patients never using the device in I vs. C: 0% vs. 21% (out of n = 15 vs. n = 29) |
Chow, 2019 [36] | Screener adherence rate was 75% |
Krok-Schoen, 2019 [11] | Mean Morisky Adherence score in I vs. C (n = 36): 1.2 SD 1.3 vs. 1.9 SD 1.7, MD (I–C) −0.8, 95% CI −1.4, −0.2, p = 0.02 |
Maguire, 2015 [37] | 182 alerts were generated over 12 months (138 amber, 44 red) |
Mougalian, 2017 [38] | 86.1% of patients responded to all the daily texts (among those who completed the pilot study, response rate was 92.2%); Average of 10 min/week was spent using the application |
Sawicki, 2019 [40] | 40% response rate to texts requiring a response; Optimal adherence in I vs. C: 53.4% vs. 43.7% (difference 9.7%, p = 0.02) |
Tan, 2019 [41] | No show rate in C vs. I: adjusted OR 6.8, 95% CI 5.5, 8.4, p < 0.0001 |
Wells, 2020 [42] | Odds of completing MBCT in I vs. C: 87% vs. 38%, p = 0.007, adjusted OR 7.8, 95% CI 1.8, 34.6 |
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Wijeratne, D.T.; Bowman, M.; Sharpe, I.; Srivastava, S.; Jalink, M.; Gyawali, B. Text Messaging in Cancer-Supportive Care: A Systematic Review. Cancers 2021, 13, 3542. https://doi.org/10.3390/cancers13143542
Wijeratne DT, Bowman M, Sharpe I, Srivastava S, Jalink M, Gyawali B. Text Messaging in Cancer-Supportive Care: A Systematic Review. Cancers. 2021; 13(14):3542. https://doi.org/10.3390/cancers13143542
Chicago/Turabian StyleWijeratne, Don Thiwanka, Meghan Bowman, Isobel Sharpe, Siddhartha Srivastava, Matthew Jalink, and Bishal Gyawali. 2021. "Text Messaging in Cancer-Supportive Care: A Systematic Review" Cancers 13, no. 14: 3542. https://doi.org/10.3390/cancers13143542
APA StyleWijeratne, D. T., Bowman, M., Sharpe, I., Srivastava, S., Jalink, M., & Gyawali, B. (2021). Text Messaging in Cancer-Supportive Care: A Systematic Review. Cancers, 13(14), 3542. https://doi.org/10.3390/cancers13143542