| Literature DB >> 31191394 |
Wouter A C Smink1,2, Jean-Paul Fox2, Erik Tjong Kim Sang3, Anneke M Sools1, Gerben J Westerhof1, Bernard P Veldkamp2.
Abstract
Online interventions hold great potential for Therapeutic Change Process Research (TCPR), a field that aims to relate in-therapeutic change processes to the outcomes of interventions. Online a client is treated essentially through the language their counsellor uses, therefore the verbal interaction contains many important ingredients that bring about change. TCPR faces two challenges: how to derive meaningful change processes from texts, and secondly, how to assess these complex, varied, and multi-layered processes? We advocate the use text mining and multi-level models (MLMs): the former offers tools and methods to discovers patterns in texts; the latter can analyse these change processes as outcomes that vary at multiple levels. We (re-)used the data from Lamers et al. (2015) because it includes outcomes and the complete online intervention for clients with mild depressive symptoms. We used text mining to obtain basic text-variables from e-mails, that we analyzed through MLMs. We found that we could relate outcomes of interventions to variables containing text-information. We conclude that we can indeed bridge text mining and MLMs for TCPR as it was possible to relate text-information (obtained through text mining) to multi-leveled TCPR outcomes (using a MLM). Text mining can be helpful to obtain change processes, which is also the main challenge for TCPR. We showed how MLMs and text mining can be combined, but our proposition leaves open how to obtain the most relevant textual operationalization of TCPR concepts. That requires interdisciplinary collaboration and discussion. The future does look bright: based on our proof-of-concept study we conclude that MLMs and text mining can indeed advance TCPR.Entities:
Keywords: multilevel models (MLMs); online interventions; process data; text mining; text variables; therapeutic change processes research (TCPR)
Year: 2019 PMID: 31191394 PMCID: PMC6548879 DOI: 10.3389/fpsyg.2019.01186
Source DB: PubMed Journal: Front Psychol ISSN: 1664-1078
Figure 1R code of the five multi-level models (M0, ME1, ME2, MCP1, and MCP2) using package lme4. In all models, we estimated the post-therapeutic measurement of CES-D (cesd) based on a random intercept for each client (id). In ME1 we estimated the post-therapeutic effect of the number of positive emotion words as the interaction effect between the number of positive emotion words (posemo) and an indicator variable (post). The other models are similar, in ME2 we estimated the effect of the number of negative emotion words (negemo), in MCP1 we estimated the effect of the number of insight words, and in the MCP2 we estimated the effect of the cause words. M0 is nested under each of these models.
Descriptive statistics of the CES-D score, insight, cause, positive, and negative emotion words from the e-mails of the clients on the pre- (T0) and post-therapeutic (T1) measurement.
| CES-D | 23.41 | 7.51 | 23 | 10 | 49 | |
| 15.42 | 8.07 | 14 | 1 | 37 | ||
| Positive emotion | 36.78 | 20.73 | 35 | 2 | 110 | |
| 43.71 | 32.07 | 34 | 0 | 162 | ||
| Negative emotion | 25.47 | 16.17 | 22 | 1 | 77 | |
| 17.76 | 13.76 | 14 | 0 | 62 | ||
| Insight | 50.52 | 27.03 | 50 | 1 | 142 | |
| 45.86 | 29.84 | 41 | 2 | 173 | ||
| Cause | 21.32 | 12.92 | 18 | 2 | 59 | |
| 20.54 | 15.25 | 18 | 0 | 85 |
Model fit, parameter estimates and corresponding standard errors of the fixed and random effects of the five multilevel models.
| 23.41 (0.792) | 22.83 (1.516) | 22.61 (1.397) | 21.62 (1.588) | 21.69 (1.447) | ||||||
| Intercept | -7.99 (0.858) | 0.02 (0.035) | 0.03 (0.045) | 0.04 (0.027) | 0.08 (0.057) | |||||
| Post-indicator | -5.60 (1.735) | -6.33 (1.649) | -5.33 (1.820) | -5.50 (1.663) | ||||||
| Variable interaction | -0.06 (0.039) | -0.08 (0.066) | -0.05 (0.033) | -0.12 (0.068) | ||||||
| 35.74 | 35.37 | 35.80 | 35.46 | 35.66 | ||||||
| τ | 25.06 | 24.89 | 25.21 | 25.21 | 24.72 | |||||
| deviance | 1327.38 | 1323.48 | 1325.89 | 1324.58 | 1324.24 | |||||
| AIC | 1335.38 | 1335.48 | 1337.89 | 1336.58 | 1336.24 | |||||
| BIC | 1348.45 | 1355.09 | 1357.50 | 1356.19 | 1355.85 | |||||
| LogLik | -663.69 | -661.74 | -662.95 | -662.29 | -662.12 | |||||
| χ2 | 3.89 | 1.48 | 2.80 | 3.13 | ||||||
| χ2 df | 2 | 2 | 2 | 2 | ||||||
| 0.67 | 0.68 | 0.67 | 0.68 | 0.67 | ||||||
The mean of the text-variable, indicated by “variable” in the table, changes between the five models: in ME1 it is the number of positive words, in ME2 it is the number of negative words, in MCP1 it is the number of insight words, and in MCP2 it is the number of cause words. The “interaction” variable is the interaction between the text variable and the post-therapeutic indicator (“post. indi.”).
Coefficients (and standard errors).
p < 0.01.
p < 0.001.