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DOI: 10.31038/IJNM.2024521

Abstract

Mind Genomics can be used to study language-based frontotemporal dementia (FTD) by synthesizing the cognitive and behavioral profiles of individuals. This personalized approach helps identify challenges and tailor interventions to each person’s needs. By recognizing the diversity of mind-sets within the FTD population, more effective strategies for diagnosis, treatment, and care can be developed. The paper shows how to use AI (Socrates as a Service) to synthesize a user-defined number of mind-sets, here three FTD mind-sets: Apathetic Mind-Set, Disinhibited Mind-Set and Compulsive Mind-Set. The combination of Mind Genomics and AI has the potential to revolutionize research, diagnosis, and care for FTD, leading to better outcomes and improved quality of life.

Introduction

Frontotemporal dementia (FTD) is a neurodegenerative disease which primarily affects the frontal and temporal lobes of the brain. FTD leads to changes in behavior, personality, and language skills. Common symptoms include changes in behavior, personality, and language abilities. Sufferers may exhibit apathy, social disinhibition, impulsivity, and emotional bluntness. The speech of FTD sufferers may become fluent but lack meaning, or they may struggle to find the right words. As the disease progresses, patients may develop memory loss and lose the ability to perform daily activities. It is important for nurses to understand these language changes in order to communicate with, and care for FTD patients [1-4]. Talking to people who have frontotemporal dementia is an important part of giving them good care and support. When working with these people, nurses need to be patient, kind, and understanding. It is best to speak slowly, use simple words, and give the patient a lot of time to answer. Body language, such as gestures, facial expressions, and the tone of one’s voice, can also help get the point across. To start a therapeutic relationship and look out for the patient’s well-being, one needs to build trust and a relationship with them. Patients may have trouble expressing their needs, feelings, and thoughts because their language skills are affected. It is helpful to use simple words, speak slowly and clearly, and show things to help people understand. It’s important to build trust and a relationship with patients so they feel safe and understood. Getting into a routine and being consistent with how one talks to them can help FTD patients feel less anxious and confused and improve their overall quality of life [5-8]. Artificial intelligence (AI) can help us learn a lot about how to help FTD sufferers. AI can help researchers find patterns, predict how the disease will progress, and come up with personalized treatment plans by looking at data from people who have FTD. AI can also create virtual simulations which tutor healthcare professionals as they practice talking to FTD patients, learning how to do it better. Incorporating AI into nursing may be a strong positive step in the evolution of medicine in this age of intelligent computing [9-11]. AI may be able to help nurses gain insight and information about how FTD suffers think and reason, giving the nurses a way to come up with better ways to talk to the FTD sufferer. By looking at data and putting it all together. AI can help nurses guess what might happen, allowing the nurse to modify their approach to fit the needs of each FTD sufferer. Nurses can learn more about how to care for people with FTD by using AI to look at huge amounts of data and then simulate different situations [12-14].

Learning about FTD by Using Mind Genomics Discoveries Regarding Mind-Sets

Mind Genomics is an emerging science focusing on how people perceive and react to the world of the everyday. Mind Genomics has a long history of application in the social sciences, marketing, and consumer research to better understand human behavior. Researchers can better connect with various groups of people by dividing populations according to their mindsets. Research has demonstrated that this customized method outperforms generic messaging when it comes to achieving desired responses from specific audiences. Mind Genomics works by developing questions about a topic, these questions telling a story, and then creating answers to the questions. The process takes the answers (aka elements, stand-alone phrases which paint a word picture), combining them into short vignettes, presenting the vignettes to survey takers (respondents). The ratings assigned by the respondents are then deconstructed by statistics (ordinary least squares regression). The output of regression, coefficients showing the ‘driving power’ of the elements, is subject to cluster analysis [15]. The output of the foregoing statistical journey are sets of people who think differently about the same specific topic, and thus who should be treated differently through communication. The Mind Genomics studies continue to reveal different clusters of people, different mind-sets. The vignettes were set up so that each respondent evaluated a totally different set of vignettes. The most recent design calls for four questions, and four answers to each question, but earlier versions called for four questions and nine answers to each question (60 vignettes), or six questions and six answers to each question). It was impossible to game the system. The mindsets ended up being coherent, interpretable, and often meaningful for subsequent communication. The outcome was thus the development of specific, granular knowledge about aspects of a topic, as well as the precise words to which the different mind-sets would react [16-18].

The Mind Genomics Process and the Introduction of AI to Help Coach the Users

As stated above, Mind Genomics was created to help users (e.g., researchers) discover how people think about the world of the ordinary, doing so by creating questions and then answers to those questions (elements). Whereas on the surface this requirement seems fairly easy, the reality in practice was anything but that. The reality turned into the recognition that structured thinking to do the seemingly simple task was more elusive. At first in 2015 and later the answer was extensive training. The training, however, was also an inhibitor, converting the satisfaction of learning into the pain of learning a new tool. The development of AI around 2022-2023 which generated the breakthrough, shown descriptively in Panel A as Idea Coach. Idea Coach was the link to AI. A specific program was developed to create questions and answers. This program used AI, and was called, not surprisingly, Socrates as a Service.

Figure 1 shows the process which led to the AI, and in turn to this paper.

  1. Panel A shows the request to develop four questions. The topic is communicating with and helping patients with FTD. As just noted, the response to providing the questions was eventually the creation of four questions, but with a great deal of angst, insecurity, and often simple frustration. It was at this point that many prospective users simply abandoned the process.
  2. Panel B shows the input to AI (Idea Coach). The user types the request into the box. The AI in Mind Genomics is a programmed set of queries (SCAS, Socrates as a Service). SCAS is programmed using ChatGpt 3.5 [19,20] to provide the questions, and the answers, depending upon the information provided to it. The imortant thing is that SCAS is quick, returning in 15 seconds, allows for numerous iterations so the user can get an education at the time when SCAS is used, and finally returns with additional post-use analyses, also in depth, serving as a way to increase learning.
  3. Panel C shows the output from SCAS. SCAS is programmed to provide 15 questions for each iteration. Subsequent iterations generate new sets of questions. When the user runs 10 iterations, it is likely that the result will be a set of 100+ unique questions embedded in the total of 150 questins returned by SCAS. The 100 or so questins creates an extensive reference library of questions, each one of which can be addressed.
  4. Panel D shows the selection of a random set of four questions to be entered into the templated sytem for Mind Genomics. These questions can be selected ‘as is’ from the SCAS output, or edited, and sometimes the questions can be inserted manually by the user, without any help from AI.
  5. Panel E shows the request for four answers for Question 1 of 4. The question comes directly from the first question in Panel D.
  6. Panel F shows the first eight of 15 answers for Question 1. Each iteration of SCAS answers one of the four questions selected, and generates 15 answers. As before, the answers can be edited, the request for answers can be iterated, and the question itself can be edited to shape the nature of the answers.

fig 1

Figure 1: The process of Mind Genomics. Panel A shows the request for four questions. Panel B shows the squib, viz., the background to SCAS (the programmed AI). Panel C shows a subset of the 15 questins which emerge from each iteration. Panel D shows the selected questons automatially entereed into the Mind Genomics template. Panel E shows the request for 15 answers to questin 1, with the text of the quetisn at the top of the screen shot. Panel F shows some of the 15 answers emergng from SCAS.

Moving Beyond User-generated Questions to AI Generated Questions

The introduction of AI into the Mind Genomics platform was done with the idea that the SCAS approach would be a source of additional learning. To that end, the creation of 15 questions was made a standard feature of the in Figure 1, Panel B. Any time that the user would engage SCAS through the user-provided squib, there outcome would be a set of 15 questions. As part of using the system, several times the 15 questions emerging from SCAS were ‘accidentally’ copied and then used for the next iteration of SCAS. The SCAS dutifully returned with an answer to each question. When this happy state of affairs was recognized, it was not long before the questions were ‘imported’ into SCAS, with requests to provide more than just a single answer. Table 1 shows the results of tentative steps to push SCAS to provide two answers and a ‘slogan’ for each of 12 questions which had had emerged from SCAS in the previous iteration. It is virtually impossible to detect the fact that these questions and answers all come from AI.

Table 1: Questions and answers about FTD, all generated by AI, with the requested information alone coming from the human user.

tab 1

Introducing Mind Genomics Thinking into AI by Hypothesizing the Nature of Three FTD Mind-sets

It was the discovery that the AI embedded in SCAS could do more than simply respond to questions which generated the next step. The question was what AI would do when given specific background information assumed to be ‘true,’ and then instructed to provide information to ‘flesh out’ the background information. The AI would be given specific information and specific requests. The ‘test’ began by telling AI that for FTD (language loss variety) there are three major mind-sets. We do not specify what they are, nor anything else. The only information that the AI receives is the specification of three mind-sets, followed by the instruction to answer specific questions. The actual information provided to the AI was thus minimal. The statement that there were three mind-sets for SCAS to ‘create’ the mind-sets in detail: Apathetic, Disinhibited, and Compulsive, respectively. Table 2 describes the Apathetic Mind-Set, Table 3 the Disinhibited Mind-Set, and Table 4 the Compulsive Mind-Set.

The final simulation effort appears in Table 5. Table continues the effort of answering a series of questions, moving beyond simple answers by directing SCAS to provide two answers and a memorable slogan.

Table 2: AI-synthesized characteristics of the Apathetic Mind-Set

tab 2

Table 3: AI-synthesized characteristics of the Disinhibited Apathetic Mind-Set

tab 3

Table 4: AI-synthesized characteristics of the Compulsive Mind-Set

tab 4

Table 5: Answers to direct questions posed by the user (Part 1) and then additional information ‘volunteered’ by SCAS afterwards. The table is constructed from several iterations.

tab 5(1)

tab 5(2)

Discussion and Conclusions

By employing Mind Genomics in the study of FTD, researchers can uncover valuable insights into the cognitive and behavioral profiles of individuals with the disease. This personalized approach can help identify specific challenges and tailor interventions to address the individual needs of each person living with FTD. By recognizing the diversity of mind-sets within the FTD population, we can better understand the complexities of the disease and develop more effective strategies for diagnosis, treatment, and care. Through the application of Mind Genomics in the field of FTD research, we can gain a deeper understanding of the cognitive and behavioral changes associated with the disease. By identifying distinct mind-sets within the FTD population, we can tailor interventions to address the specific challenges faced by individuals with different profiles. This personalized approach can lead to more targeted and effective care strategies to improve the quality of life for individuals living with FTD and their caregivers. In summary, Mind Genomics offers a powerful tool for understanding the diverse ways in which individuals with language-based FTD experience and navigate the world. By recognizing and synthesizing the unique mind-sets present within the FTD population, we can develop more personalized and effective interventions that address the diverse needs of individuals affected by the disease. This approach has the potential to revolutionize the way we approach research, diagnosis, and care for individuals with FTD, ultimately leading to better outcomes and improved quality of life.

Acknowledgement

Howard Moskowitz gratefully acknowledges the ongoing of help of Ms Hilda Varnum in this effort, and the contribution of Ms Arlene Gandler who provided the original stimulation to write this paper.

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Article Type

Research Article

Publication history

Received: March 05, 2024
Accepted: March 10, 2024
Published: March 15, 2024

Citation

Moskowitz H, Rappaport S, Cooper R, DiLorenzo A, Saharan S, et al. (2024) How AI Helps a Nurse Learn How to Better Communicate with a Sufferer of Frontotemporal Dementia: Exploring AI Driven by the Mind Genomics World-view. Integr J Nurs Med Volume 5(2): 1–8. DOI: 10.31038/IJNM.2024521

Corresponding author

Howard Moskowitz
Cognitive Behavioral Insights
LLC, Albany
NY, USA