- 1Cognitive Behavioral Assistive Technology Team, RIKEN Center for Advanced Intelligence Project, Tokyo, Japan
- 2Japan Society for the Promotion of Science, Tokyo, Japan
Background: Social activity is a key component in the prevention of cognitive decline. However, face-to-face social intervention has limited accessibility. To address this issue, we developed the “Photo-Integrated Conversation Moderated by Application” (PICMOA), a home-based group conversation intervention using smartphones. This paper introduces the PICMOA intervention and the protocol of the ongoing randomized controlled trial (RCT), which aims to evaluate the effects of PICMOA on the cognitive functioning and psychological well-being of Japanese community dwelling older adults at the risk of cognitive function decline.
Methods: This study uses an RCT design in two parallel group trials with 1:1 allocation. The participants are community dwelling older adults aged 65 years and above, living in an urban city in Japan, with subjective cognitive concerns. In total, 81 participants were allocated to the intervention or control groups. The intervention group receives 30 min of weekly PICMOA sessions at their home for 12 weeks. The PICMOA intervention consists of (1) a photo preparation period before the session and (2) a structured group conversation session talking about the photos that participants took according to a specific theme. The control group receives 30 min of weekly health education videos on a tablet device. The primary outcome is cognitive functioning at pre- and post-phases of the 12-week intervention measured using the Telephone Interview for Cognitive Status in Japanese, semantic and phonemic fluency tests, and the Digit Span Forward and Backward tests. The secondary outcomes are psychological and social aspects including mental status, well-being, loneliness, and social support.
Discussion: Interest is growing in internet-based activities for preventing social isolation. However, the effect of remote conversation interventions on cognitive functioning remains unclear. This study addresses this issue and provides a new avenue of social participation for older adults.
Clinical trial registration: https://www.umin.ac.jp/ctr/, identifier: UMIN000047247.
1. Introduction
Cognitive health is a crucial concern for the health and well-being of older adults. Comprehensive interventions for modifiable risk factors could theoretically prevent or delay about 40% of dementias worldwide (Livingston et al., 2020). Social activity is one of the key factors for the prevention of dementia. There is vast empirical evidence on the longitudinal association between low levels of social activity and the occurrence of dementia (e.g., Fratiglioni et al., 2000; Karp et al., 2006; Saczynski et al., 2006; Amieva et al., 2010). A recent meta-analysis suggested that less frequent social contact, low social participation, and loneliness were significantly associated with the incidence of dementia with strengths comparable to other well-known risk factors of dementia (Kuiper et al., 2015). However, no global recommendation was made in the guidelines of the World Health Organization (WHO), as there was insufficient evidence that social activity intervention reduced cognitive decline and the onset of dementia to draw conclusions (World Health Organization, 2019). Therefore, it is hoped that the knowledge about the impact of social activities on cognitive decline will be accumulated through randomized controlled trials (RCTs).
One of the components of social activities is social contact in which people interact through conversations. There is a close association between linguistic ability, which is the underlying function of conversation, and cognitive health. Linguistic deficits often present in patients with mild cognitive impairment (MCI) and early stages of dementia (Taler and Phillips, 2008). Linguistic features may change as cognitive function declines. A previous study identified the characteristics of spontaneous speech among patients with mild to moderate Alzheimer's disease (AD), such as more production of word-finding delay, semantic paraphasia, empty and indefinite phases, and fewer repaired errors (Forbes-McKay et al., 2013). Another study from the Wisconsin Registry for Alzheimer's Prevention reported that features of speech fluency and semantic content in the spoken language declined faster among participants with early MCI than among those who were cognitively stable (Mueller et al., 2018). Some attempts have been made to screen patients with dementia and MCI by linguistic features such as speech volume, tense, and vocabulary (Fraser et al., 2016; Asgari et al., 2017).
In addition to linguistic ability, conversation is a task that stimulates multiple cognitive functions. Conversation requires attention, working memory, inhibition, and cognitive control (Ybarra et al., 2008; Ybarra and Winkielman, 2012) to read the intentions and feelings of others, maintain focus, manage issues flexibly, and control inappropriate behavior. Therefore, we hypothesized the benefits of conversation-based intervention on cognitive function. Based on our hypothesis, we developed our original intervention called Photo-Integrated Conversation Moderated by Robots (PICMOR), which is a structural group conversation program (Otake-Matsuura et al., 2021) and have examined the effect of this conversation-based intervention.
In the PICMOR program, participants have face-to-face conversation sessions in groups of four and talk about the photographs they took according to a pre-decided theme. As a result of utilizing PICMOR in an RCT among healthy older adults, phonemic fluency was significantly improved by following a 30-min weekly session for 12 weeks, compared to the control group in which free group conversations were held in the same frequency (Otake-Matsuura et al., 2021). Moreover, our post-intervention multimodal magnetic resonance imaging (MRI) showed significant differences in brain metrics between the PICMOR and control groups, which could be associated with the beneficial effect of the intervention on phonemic fluency (Sugimoto et al., 2020; Sugimoto and Otake-Matsuura, 2022a,b). For example, compared to the control group, the intervention group had higher resting-state functional connectivity between the left inferior frontal gyrus, one of the most important brain regions for verbal fluency, and right temporal pole which has been associated with semantic processing (Sugimoto et al., 2020). Additionally, resting-state functional connectivity between these regions was positively correlated with the enhanced phonemic fluency score measured by a neuropsychological test. Moreover, we attempted to elucidate neural underpinnings responsible for the intervention-induced enhancement of verbal fluency by analyzing structural characteristics, including brain volume (Sugimoto and Otake-Matsuura, 2022a) and diffusion tensor imaging (DTI) metrics (Sugimoto and Otake-Matsuura, 2022b).
Although the evidence of our intervention has been accumulated, such face-to-face interventions have one limitation: these are not applicable to the population at risk of isolation (e.g., disability, low accessibility area, or pandemic infection) and those who cannot physically access the intervention. In particular, the recent spread of COVID-19 has forced many older adults to become socially isolated. A prior report by Murayama et al. reported that the weighted prevalence (95% confidence interval) of isolation increased from 21.2% (20.7–21.7%) to 27.9% (27.3–28.4%) in Japan during COVID-19 (Murayama et al., 2021). Since social isolation is related to physical, mental, and cognitive health, there is a huge concern about the physical and mental health implications of social isolation and loneliness (Sepúlveda-Loyola et al., 2020).
In these situations, conversations are still possible even at remote locations using remote communication technology that facilitates widespread intervention. Therefore, we developed a smartphone application that provides home-based group conversation intervention through an easy interface, called “Photo-Integrated Conversation Moderated by Application” (PICMOA), based on our previous PICMOR intervention. In a similar study, Dodge et al. conducted an RCT that was a six-week intervention of talking to an interviewer via a PC-based video chat and found its short-term effects on the semantic and phonemic fluency compared to the controls (Dodge et al., 2015). Although there is a growing focus on internet-based social activity intervention to prevent social isolation, the effect of remote conversation intervention on cognitive functioning is still unclear.
Thus, we have conducted this trial to evaluate the effects of PICMOA on cognitive functioning and psychological well-being among older adults at risk of cognitive decline. Considering the aforementioned evidence, we hypothesized that remote conversations through the PICMOA intervention affects the maintenance of cognitive functioning. Additionally, we are interested in studying the effect of social interaction through the intervention on psychological well-being. In this paper, we introduce the overview of the PICMOA intervention and the whole picture of the ongoing RCT protocol utilizing the PICMOA intervention for 12 weeks. This trial uses an RCT design in two parallel group trials with 1:1 allocation and is registered with the University Hospital Medical Information Network (UMIN) clinical trials registry (UMIN000047247).
2. Methods
2.1. Study setting and eligibility criteria
The participants are community dwelling older adults aged 65 years and above, living in Wako city, which is an urban area in Japan's Saitama Prefecture near the metropolitan area with a population of 83,821 as of March 2020 (Wako city, 2021). Figure 1 shows the flow of the trial for the participants, including the selection process. In addition to age, the other selection criteria include having subjective cognitive concerns; scoring at least 33 in the Telephone Interview for Cognitive Status in Japanese (TICS-J), which indicates no cognitive impairment (Konagaya et al., 2007); available to provide written consent; and available to perform necessary tests on the designated date. The exclusion criteria include neurological impairment, history of previous medications or diseases known to affect the central nervous system, stroke, serious head injury, serious complicating disorder, and under long-term care (defined as those certificated as “care needs levels” or “support need levels” in the public long term care insurance system).
Subjective cognitive concerns (part of the inclusion criteria) were screened by three items of cognitive functioning in the Kihon checklist (KCL) (Sewo Sampaio et al., 2016). The KCL is a self-reporting scale widely used to screen the risk population across Japan, designed by a study group from the Ministry of Health, Labor and Welfare in Japan. Municipalities in Japan have used the KCL to assess and screen high-risk individuals who need intervention, and then provide intervention programs based on its result in each domain to prevent future disability and extend healthy life expectancy. The KCL consists of seven dimensions including daily life, physical strength, nutritional status, oral function, the extent of being housebound, cognitive function, and depression risk. The cognitive function domain in the KCL has three items: (1) “Do your family or your friends point out your memory loss?” (2) “Do you make a call by looking up phone numbers?” and (3) “Do you find yourself not knowing today's date?” (Arai and Satake, 2015). Each item has two choices: “Yes” and “No.” At least one risk response to these three items is considered the risk of cognitive decline and defined as cognitive concerns in this study, referring to the prior RCT studies utilizing KCL to screen the participants with subjective cognitive concern (Huang et al., 2020, 2021).
2.2. Intervention
The intervention group receives weekly group conversation interventions via smartphone at their home. All participants in the intervention group use PICMOA, which is the smart phone application that provides home-based group conversation for older adults through an easy interface (Figure 2). We prepared the smartphone (Motorola moto g50) with an internet connection and a manual for all participants. The PICMOA application has several functions to facilitate a series of group conversation interventions, including taking photos in daily life, reminiscing about photos taken previously, selecting photos for the intervention session, conversations as intervention sessions, setting an alarm for the intervention, and checking schedules. It was developed based on Jitsi Meet (https://meet.jit.si/) which is an open-source software web conferencing system (Figure 3). The PICMOA intervention was inspired by the PICMOR program, which was a face-to-face group conversation intervention facilitated by a robot used in our previous RCT (Otake-Matsuura et al., 2021). Our series of group conversation interventions consists of (1) a photo preparation period before the session and (2) structured group conversation discussing photos taken by participants according to a specific theme. Figure 4 depicts the flow of the structured group conversation during the PICMOA intervention.
Figure 2. Interface of the PICMOA application. (A) Home screen, (B) screenshot of “Take Photo” option, (C) screenshot of “Select Photo” option, (D) screenshot during the conversation session, and (E) screenshot of “Schedule” option.
During the one-week preparation period for each intervention session, participants are instructed to take as many photos as possible in their daily life according to the theme of conversation for the next intervention session (e.g., favorite things, neighborhood landmarks) using the camera function in the intervention application. The list of 12 themes of conversation was described in our previous paper (Otake-Matsuura et al., 2021). Then, participants are required to register two photos, which they select from the photos they took during the 1-week preparation period via the application for the intervention session.
The participants join the conversation session in a small group of four people. The conversation system in the application is designed to start automatically on the participants' smartphone at the scheduled time. The group conversation program is structured into presentation and discussion parts. First, one participant presents (presenter) one photo for one minute which is displayed on all participants' smartphones through the application. Subsequently, all other participants ask questions about the photo, and the presenter responds to the questions in a natural conversation context for two minutes. Then, another photo is displayed, and participants continue presenting and discussing the new photo. After one participant presents two photos and all the other participants discuss it, the role of presenter is switched to another participant and the same process is repeated so that participants experience two photos per presenter in one intervention session.
If a participant drops out after allocation to the intervention group, the intensity of the intervention, such as the number of pictures, intervention time, and the number of people to talk to, will change. The bias resulting from inconsistent intervention intensities across groups could directly affect the results and effect sizes. Therefore, in cases where a participant drops out, older volunteers or research staff participate in the intervention session as a substitute to control the intensity of the intervention.
On the other hand, control group participants attend an active control, which is a weekly health education video on the tablet (Lenovo YT-X705L). All participants in the control group are required to watch the health education videos about successful aging for approximately 30 minutes via a webinar (https://zoom.us/) once a week for 12 weeks. Health education videos are provided in a noninteractive way with the participants' cameras and microphones turned off throughout.
2.3. Timeline and procedure
2.3.1. Timeline
The recruitment of participants began in April 2022 and ended in September 2022. The intervention is carried out in two phases (the first half and the second half) considering the feasibility (e.g., equipment). As of November 15, 2022, recruitment was completed, and the second phase of intervention is ongoing. The timeline of the procedure was described as a SPIRIT figure in Figure 5.
2.3.2. Procedure
In the recruitment phase, the municipality government sent recruitment letters to community dwelling older adults, who responded to previous surveys of the municipality and do not have long term care certification, by mailing them in several batches. We also posted flyers on the city's website and placed flyers at city stores. Once our research staffs were contacted by potential participants who expressed their interest in the trial, the eligible participants were required to provide their written informed consent if they agreed to participate after the explanation of the research. The inclusion and exclusion criteria except for the scores of TICS-J were screened at this point.
After obtaining informed consent to participate, questionnaires and standardized neuropsychological batteries were administered as baseline assessments. Based on the scores of TICS-J in the baseline assessment, final screening was done to proceed to the randomization step.
Following the allocation, a letter was sent to each participant to inform them of the group allocation. Next, participants practiced using the equipment (smartphone/ tablet) with the provided manual and timely instruction from research staff, and experienced a test session of PICMOA/health education once. Then, they started the intervention phase for 12 weeks.
2.3.3. Randomization
Stratified randomizations were performed using a permuted block with a 1:1 allocation to one of the two groups: (1) intervention group with PICMOA and (2) control group with health education. Participants were stratified according to sex and sorted based on the TICS-J total scores. Then, permuted block randomization, with a block size of 2, was performed to allocate participants to the group using computer-generated random numbers. The individual in charge of allocation only had access to the following information during the randomization process: ID, TICS-J scores, and sex. All randomization processes were conducted using statistical software R.
2.4. Outcomes
2.4.1. Cognitive functioning
The primary endpoint is cognitive functioning at the pre- and post-phase of the 12-week intervention. We hypothesize that PICMOA, i.e., the conversational intervention, may contribute to maintaining or enhancing the linguistic and executive functions among older adults because conversation may be linked to these functions.
To evaluate the intervention effects on cognitive functioning, we have used standardized neuropsychiatry tests. The TICS-J (Konagaya et al., 2007) is used to evaluate global aspects of cognitive functioning. Verbal fluency tests, more specifically, semantic fluency and phonemic fluency tests are introduced to assess retrieval from memory that may also link to executive controlling (Lezak et al., 2012). The verbal fluency test asks to generate the names of animals to test semantic fluency and the words beginning with “ka” to test phonemic fluency. In both tasks, the total number of words produced in one minute is counted. Digit Span Forward and Backward tests from the Wechsler Adult Intelligence Scale – Fourth Edition (WAIS-IV) (Wechsler, 2008) are used for the assessment of simple memory span and working memory capacity, respectively. The Digit Span test requires participants to repeat numbers presented by the examiner in the same order for the Forward test and in reverse order for the Backward test. All neuropsychological test measures are evaluated telephonically by well-trained clinical psychologists. Although this study is an open-label trial, the assessors are blinded for the allocation results to prevent assessment bias.
2.4.2. Psychological well-being
The secondary endpoint evaluates whether the PICMOA intervention effects social and psychological properties including mental status, well-being, loneliness, and social connectedness. The Japanese version of the Geriatric Depression Scale-short form (GDS-15) (Sugishita et al., 2017) is used to assess mental status. The GDS-15 is a common 15-item depression screening scale that showed high validity and reliability among Japanese older population. The score ranges from 0 to 15 with higher scores indicating a more depressed mood. The 5-item World Health Organization Well-Being Index (WHO-5) (Inagaki et al., 2013) is used to assess subjective psychological well-being. The WHO-5 has adequate validity and has been used as an outcome measure in clinical trials (Topp et al., 2015). The percentage score of WHO-5, ranging from 0 to 100, is calculated based on the raw score multiplied by 4. Additionally, the Health Utilities Index Mark 3 (HUI3) (Horsman et al., 2003; Noto and Uemura, 2020) is introduced to evaluate the health-related quality of life (HRQoL). The HUI3 classification system comprises eight components, including vision, hearing, speech, ambulation, dexterity, emotion, cognition, and pain, with five or six levels of ability/disability for each. HUI3 introduces the single- and multi-attribute utility scoring systems. The single-attribute utility score ranges from 0.00 to 1.00 in each component and multi-attribute utility score of overall HRQoL ranges from −0.36 to 1.00.
We use the Multidimensional Scale of Perceived Social Support (MSPSS) (Zimet et al., 1988; Iwasa et al., 2007) and UCLA Loneliness Scale-10 item version (Arimoto and Tadaka, 2019) for social support network and perceived loneliness, respectively, to assess the social aspects. The MSPSS is a 12-item scale. Total score and subscale-scores regarding support from family, friends, and significant others can be calculated by the average of each score, ranging from 0 to 7 where higher score implies stronger support. Loneliness is measured using a 10-item version of the revised UCLA Loneliness Scale which assesses the frequency of feeling lonely with 4 choices per item: (1) never, (2) rarely, (3) sometimes, and (4) always. The total score can range from 10 to 40 with higher score indicating severe loneliness.
During the intervention period, participants are required to answer the 6-point smiley face Likert scale before and after each PICMOA or health education session to evaluate the immediate psychological change.
2.5. Sample size
Based on our prior RCT study using group conversation intervention, we hypothesized the small to medium effect size of the PICMOA intervention on the verbal fluency tests, which measure the cognitive outcomes in this study. We used G*power (Faul et al., 2007) for sample size calculation, with 80% power, small to medium effect size (f = 0.175), a two-sided hypothesis test, an analysis of variance model between groups over time, and an alpha level of 5%. The sample size calculation showed that we needed a total of approximately 80 participants considering a 15% drop out. Eighty-one participants were included in the trial and allocated to the intervention or control groups.
2.6. Data management and monitoring
The research staffs manage all data including the results of neuropsychiatry tests and questionnaires. Data entry will be outsourced to a third party. All records of nonadherence and drop-out will be electronically documented. Anonymized data stored on a secure computer will be used for analysis, and the data with personal information will be kept in a locked cabinet in a secured office.
2.7. Statistical analyses
To estimate the effect of the PICMOA intervention, the linear mixed models with random intercepts for outcome measurements will be computed. The models will include the following independent variables: groups assignment factor (PICMOA group: 1, control group: 0), time factor (pre: 0, and post: 1), and their interaction term (time × group). The interaction term will be interpreted as the intervention effect. Given that some baseline statuses such as cognitive functioning, psychosocial status, and familiarity with using equipment may influence the effect of this social intervention, we will examine how much the intervention effects vary depending on the levels of these statuses.
All analyses will be performed using R software, and statistical significance threshold will be set as P < 0.05.
2.8. Ethics
This study was approved by the ethics committee of RIKEN (RIKEN-W3-2021-049). Written informed consent was obtained from all the participants. All procedures are conducted in accordance with the ethical principles for medical research involving human subjects detailed in the Declaration of Helsinki.
3. Discussion
While there is an increasing focus on internet-based social activity intervention with the development of communication technology in recent years, the impact of remote social activity intervention on cognitive functioning is still uncertain. We developed PICMOA, which is a home-based group conversation intervention, with a focus on the close connection between linguistic ability and cognitive health. Although our PICMOA trial is underway for evaluation, it is expected to accumulate evidence with the following strengths.
First, PICMOA allows participants to join sessions from home or anywhere. While old age is a period when accessibility tends to decline due to various functional declines and environmental changes, this application provides participants with greater accessibility to preventative interventions. Second, the structured group conversation program which is the content of the PICMOA intervention gives participants equal opportunities to talk about their own photos and ask questions. The amount of speech during the session may lead to less biases among participants, which means that the intensity of intervention would be more uniform compared to general conversation. Third, the PICMOA application has technological strength as it has been developed to be both user- and interventionist-friendly. This application has a user-friendly interface that is easy to use, and the intervention session automatically starts at the predetermined intervention time by utilizing the scheduler and signaling the server in the application system. This enables participants, even older adults who do not touch their smartphones regularly, to join the intervention session easily, without having to launch the application to access the intervention session. Many older people are not familiar with operations on digital devices such as smartphones yet, but this application is designed to be user-friendly. Furthermore, PICMOA has an automatic moderator function that, in an artificial voice, facilitates conversations by moderating the presenters' turns and switching photos based on the predetermined time slot duration. This system may contribute to conserving human resources, especially in the facilitation of interventions and time management that is carried out by humans in classic social interventions. Fourth, this trial includes older adults at risk of cognitive decline which is operationally defined as subjective cognitive concern using the KCL. Individuals at risk of cognitive decline screened by KCL are the target of preventive care in the public service (long-term care and living support project) in Japan; targeting this population in the trial has great public health importance.
The limitations of the study should also be noted. Although a large-scale trial is ideal for sub-analysis such as stratified analysis by various demographics, this trial has been conducted with the required sample size of over 80 people due to feasibility. Additionally, this ongoing trial cannot address the neural mechanism of the intervention effect because we did not plan to collect brain-related information, such as MRI data to prioritize having less direct contact with participants for their safety.
Despite these limitations, we believe that our ongoing trial can contribute by adding new knowledge regarding the impact of remote social activity intervention. As the global burden of dementia and the serious situation of social isolation are important public health issues, our intervention, which utilizes remote technology, will help by providing an avenue for preventive care to an isolated population and introducing a new way of social bonding and community participation. We are accumulating evidence regarding the effects of the intervention in the ongoing RCT and plan to confirm its applicability and issues in future large-scale trials.
Ethics statement
The studies involving human participants were reviewed and approved by the Ethics Committee of RIKEN. The patients/participants provided their written informed consent to participate in this study.
Author contributions
KM contributed to the conception, study design, drafting, and revision of this paper. ST, TS, and HS assisted in the conception, drafting, and revision of this paper. MO-M is the principal investigator and designed the smartphone application. All authors have read and approved the final manuscript.
Funding
This work is supported by JSPS KAKENHI (Grant Numbers: 22H00544 and 22H04872), Grant-in-Aid for JSPS Fellows (21J01494), and the Japan Science and Technology Agency (Grant Numbers: JPMJCR20G1, JPMJPF2101, and JPMJMS2237). The funding sources have no role in the study design, data collection and analysis, writing of the report, and the decision to submit the article for publication.
Acknowledgments
We are grateful to all our research staff and members who contribute to the PICMOA trial. We would also like to thank all the study participants for their dedication and commitment.
Conflict of interest
The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
Publisher's note
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Keywords: cognitive health, mobile applications, communication technology, social isolation, randomized controlled trial
Citation: Miura KW, Tokunaga S, Sekiguchi T, Sugimoto H and Otake-Matsuura M (2023) Effect of home-based group conversation intervention using smartphone application on cognitive health and psychological well-being of older adults with subjective cognitive concerns in Japan: a randomized controlled trial protocol. Front. Psychol. 14:1114790. doi: 10.3389/fpsyg.2023.1114790
Received: 02 December 2022; Accepted: 17 April 2023;
Published: 16 May 2023.
Edited by:
Mario Bernardo-Filho, Rio de Janeiro State University, BrazilReviewed by:
José Alexandre Bachur, University of Franca, BrazilAlessia Rosi, University of Pavia, Italy
Copyright © 2023 Miura, Tokunaga, Sekiguchi, Sugimoto and Otake-Matsuura. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
*Correspondence: Mihoko Otake-Matsuura, bWlob2tvLm90YWtlJiN4MDAwNDA7cmlrZW4uanA=