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. 2017 Aug 24;6:1560. [Version 1] doi: 10.12688/f1000research.12327.1

TicTimer software for measuring tic suppression

Jonathan K Black 1, Jonathan M Koller 2,3, Kevin J Black 2,3,4,5,a
PMCID: PMC5770993  PMID: 29375812

Abstract

Woods and Himle developed a standardized tic suppression paradigm (TSP) for the experimental setting, to quantify the effects of intentional tic suppression in Tourette syndrome. The present article describes a Java program that automates record keeping and reward dispensing during the several experimental conditions of the TSP. The software can optionally be connected to a commercial reward token dispenser to further automate reward delivery to the participant. The timing of all tics, 10-second tic-free intervals, and dispensed rewards is recorded in plain text files for later analysis. Expected applications include research on Tourette syndrome and related disorders.

Keywords: tic disorders, Tourette syndrome, reward, reinforcement, psychology, software

Introduction

Woods and Himle developed a tic suppression paradigm (TSP) that could be used in the experimental setting to demonstrate and quantify the effects of intentional tic suppression on tic rate in Tourette syndrome (TS) and other tic disorders 14. In this paradigm, each participant is observed during several experimental conditions, baseline and differential reinforcement of zero-rate ticcing (DRO), and sometimes also verbal instruction to suppress tics and noncontingent reinforcement (NCR).

In the course of conducting a longitudinal study of children with Provisional Tic Disorder 5, we found that tic suppression is seen within the first few months after a child’s first tic 6. We also found that the TSP required substantial investigator effort, and we started writing software with the following goals:

  • automated tic counting, timing and record-keeping;

  • automated reward delivery in the DRO condition;

  • automated reward delivery in the NCR condition.

The overall motivations included not only convenience but also improvement in accuracy. We present the software here to facilitate its use by others.

Methods

Implementation

TicTimer first has the user set up the details for a session, then it runs a clock for the specified session time while writing significant events to a log file. The program writes a line to the log file for each of the following events: session started and ended, tic detected, ten seconds passed without tics, and reward dispensed. Each line includes the time of the event. By parsing through each line in a log file, a python script can extract and summarize the key data.

The hardware allows reward tokens to be dispensed automatically to the study participant. One end of the long cable enters the token dispenser and its two wires attach to the two pins in the Passive Connection Panel that, when shorted, trigger release of a reward token. The Student Trainer Interface box provides power to the token dispenser box and a remote pushbutton for manually triggering token release. The other end of the long cable connects to the two normally open pins on the relay inside of the small plastic box. The USB to TTL serial cable attaches to the input pins on the relay, with the USB end of the cable leaving the box to attach to the computer running TicTimer. Figure 1 anchor the final assembly.

Figure 1. From left to right: Token dispenser box, Student Trainer Interface with external pushbutton, box containing relay module, connected via USB cable to laptop running TicTrainer.

Figure 1.

Parts list:

Operation

System software requirements are Java 8 and RXTX for Java, a library for serial port communication. Binaries for Windows and Linux are provided by fizzed.com. Python 3 was used for the log file reader script.

The program can be run with or without the relay and USB cable. If the hardware is set up and connected to the computer, the program can start in “link mode.” Otherwise, TicTimer can still be run in “button mode,” in which the automatic reward system is replaced by a human who presses the push button attached to the Student Trainer Interface when prompted by a beep and a red flash on the computer screen.

The following procedure applies to both reward modes. First, the user presses “Setup” to choose which type of session is being run and to specify where the session log should be saved. For the NCR condition, the user is also prompted to identify the log file from a previously completed DRO session in the same subject (which provides the timing for the rewards dispensed in the NCR condition). Once setup is completed, the session can be started. During a session, the person observing the subject records tics by clicking the “Tic Detected” button or by pressing “T” or the space bar. If the session type includes rewards (DRO and NCR), they are dispensed appropriately. The session ends when the predetermined time elapses or when the user ends it manually by pressing “End Session” or by closing the window.

If a session is ended manually and restarted, the new session log will be appended to the old one unless a new file was chosen in setup. If a log file contains multiple sessions, only the last session will be used by the NCR mode (which requires a DRO session file in setup) and the data reader script.

To summarize the data from a TicTimer log file, run the accompanying python script (TT_Data.py) with one or more log files as arguments. For each log file given, the script reports the length of the session and the number of tics, 10-second tic-free intervals, and rewards dispensed during the session.

Use cases

We have provided 8 sample session log files as Supplementary Files ( Supplementary files 1Supplementary file 8) ( subject100_session*_TicTimer_log.txt). These are examples of the files that TicTimer creates during a session. Each line in a log file contains an event and the time at which it occurred. Log files are written in plain English, so they can be read directly if desired. These sample data originated from a participant in the study described by Greene et al. 6, but all identifying data were removed and these files no longer comprise human subjects data.

The file TT_Data_output.txt ( Supplementary file 9) contains output from the python script, summarizing those session files. This output is again in plain text, reporting the session length and the number of each type of event recorded for each log file.

Conclusions

The TicTimer program, now connected to the reward token dispenser, has simplified implementing the TSP and improved the accuracy of reward delivery (given inevitable limitations of human attention and response time in button mode). The software, while designed for our purposes in tic disorder research, may find other uses. The most obvious of these may be for research on traditional habit disorders; for instance, hair pulling and skin picking appear in the “Obsessive-compulsive and related disorders” section of DSM-5 7.

A preprint of this work has been published on Authorea.com 8.

Software availability

The source code is available on GitHub under a BSD 3-clause license.

The current release is available on Zenodo, at DOI 10.5281/zenodo.837884.

Acknowledgments

We gratefully acknowledge the initial tic suppression studies by Woods and Himle.

Funding Statement

Software development and manuscript preparation were funded in part by the U.S. National Institutes of Health (NIH), grant numbers K24 MH087913, R21 NS091635, and R01 MH104030.

The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.

[version 1; referees: 1 approved

Supplementary material

The first 8 supplementary files are the output from running 8 TicTimer sessions in one subject.

Supplementary File 1: Baseline Log 1

This file came from the first baseline session.

Supplementary File 2: Verbal Log 1

Output from the first session with only verbal instruction to resist tics.

Supplementary File 3: DRO Log 1

Output from the first DRO session.

Supplementary File 4: NCR Log 1

Output from the first NCR session.

Supplementary File 5: Verbal Log 2

Output from the second session with only verbal instruction to resist tics.

Supplementary File 6: Baseline Log 2

Output from the second baseline session.

Supplementary File 7: DRO Log 2

Output from the second DRO session.

Supplementary File 8: NCR Log 2

Output from the second NCR session.

Supplementary File 9: Data Reader Script Output

Output from the command "python TT_Data.py *_log.txt" in the directory containing the 8 sample log files. It summarizes the data contained in those files.

References

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F1000Res. 2017 Nov 6. doi: 10.5256/f1000research.13345.r26009

Referee response for version 1

Patrick Haggard 1

This is a simple but functional piece of software for logging tics, and automating a reward schedule based on them.

The hardware/software combination will be useful for researchers and possibly for behavioural analysis/clinical training – though this publication does not aim to describe clinical outcomes.

The software does not appear to actually detect tics automatically – there is no interface to accelometry for example. Rather an examiner seems to have to observe the examinee constantly, and enter manually when a tic occurs, presumably by pressing a button. However, this requirement is unfortunately not specified directly in the text. It also means there is a subjective component: how does the examiner judge what is a tic and what is, for example, a voluntary action: these are tricky questions which face researchers in this area.

The data is logged in a simple way that is clearly explained, and suitable for postprocessing using standard packages – but the user seems to have to write their own scripts to produce synthetic reports.

The package logs occurrence of a 10 s period in which no tic is reported – but this time window appears arbitrary: it would be useful (a) to justify it, and (b) to allow the user to change it, either at run time, or in subsequent sensitivity analysis of the log files: how long a period of tic-free behaviour should count as a success event?

The strength of the tool seems to be the automation of reward scheduling for studies of voluntary tic suppression in children.

I have read this submission. I believe that I have an appropriate level of expertise to confirm that it is of an acceptable scientific standard.

F1000Res. 2017 Dec 16.
Kevin J Black 1

We are grateful for the careful attention and thoughtful suggestions of Prof. Haggard. Here we reply to each point in his review of version 1.

  • The software doesn't detect tics automatically; the accuracy of any rater-identified tics depend on the skill of the rater. These points are all valid. The scope of the software is limited, primarily being useful to track and time the tics as noted by an expert observer, who indeed logs each tic by pressing a keyboard button or clicking a mouse. We have updated the text to clarify these details.

  • "The user seems to have to write their own scripts to produce synthetic reports." We do supply (via GitHub) the python script TT_Data.py for summarizing each primary data file, but apparently we failed to provide a direct link to this script. We have corrected this omission in this revision.

  • The choice of 10 seconds as the tic-free interval of interest is arbitrary. We chose the 10s period because of its prior use in the studies cited, but you’re correct that this choice is otherwise arbitrary. We have explained this choice in the revised ms. The suggestions in (b) are interesting, but to some extent outside of our plan for the software. We have modified the source code, however, to make a change in tic-free intervals easier to make at compile time.

  • "The strength of the tool seems to be the automation of reward scheduling for studies of voluntary tic suppression in children. " Yes, we also see that as one of its key advantages. We expect TicTimer could be applied equally well to studies of adults.

F1000Res. 2017 Oct 30. doi: 10.5256/f1000research.13345.r27424

Referee response for version 1

Danielle C Cath 1

This tool might be very useful in clinical practice to make tic suppression more objectively measured, and to substantiate the direct results of tic suppression practicing. It is potentially a useful addition to current practice of CBT in tic suppression, and entails a worthwhile initiative to develop this tool.

However, I miss information on some aspects:

  1. Direct comparison with other potential ways to generate objective quantifiable results; for instance the advantages compared to video-based tic counting.

  2. I miss reflection on potential disadvantages of the tool, and limitations of the tool (for instance in practicing in daily life, not only in the lab, is unclear.

  3. In the plain text output, I miss summary information across sessions, and f.i. graphs on tic course across sessions that could be presented to the patient and discussed. The latter would be really helpful for patients and therapist

  4. The device can in no way be used in more naturalistic sessions outside the treatment room, the authors should speculate about this, and about future developments to make the tool more practical and applicable in different situations and contexts.

  5. I miss pilot information on direct comparisons between conventional tic counting and the counting with the aid of the tictimer.

I have read this submission. I believe that I have an appropriate level of expertise to confirm that it is of an acceptable scientific standard, however I have significant reservations, as outlined above.

F1000Res. 2017 Dec 16.
Kevin J Black 1

We thank Prof. Cath for her thoughtful comments. We failed to clarify adequately the primary purpose of this software tool. It was designed rather narrowly for use in a standardized Tic Suppression Protocol in a clinical research office setting. This fact affects many of the specific comments below. We have revised the Introduction to address this point.

Here are responses to each item in your review:

  1. comparing to other tic counting methods:  This tool can be used (and we have used it) to facilitate counting tics on video recordings. The main drawback with using the software to count and time tics on video recordings is that one cannot give “live” feedback in the Differential Reinforcement of Other (zero-rate ticcing) condition.

  2. limitations:  We have rewritten the introduction to clarify the limited intended purpose, and clarify in Discussion that use outside of the research office will require adaptations.

  3. graphs showing changes over time, for clinical use: This is a useful feature that may be added in the future. In the meantime, we point out that the information in Supplementary File 9 can be imported easily into a spreadsheet program for creating such graphs.

  4. can't be used in more naturalistic settings: Correct. See our initial comment, above. We have in fact adapted some features of TicTimer for a web-based tool intended for more naturalistic (home-based) tic suppression timing. [1]

  5. comparison of TicTimer to conventional tic counting: We do not feel this is necessary, because (as we apparently failed to explain adequately) in each case an expert human is watching the person with tics. TicTimer adds the (more or less) precise timing of each tic to the record.

[1] Black JK and Black KJ. Software for web-based tic suppression training [version 1; referees: awaiting peer review].  F1000Research 2017,  6:2150 (doi:  10.12688/f1000research.13460.1)

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