Josefine Juul Jensen1,2, Susanna L Callaway2, Thomas Lunner3,4,5, Dorothea Wendt5,6. 1. 1 Department of Nordic Studies and Linguistics, University of Copenhagen, Denmark. 2. 2 Centre for Applied Audiology Research, Oticon A/S, Smørum, Denmark. 3. 3 Department of Behavioral Sciences and Learning, Linköping University. 4. 4 The Swedish Institute for Disability Research, Linköping University and Örebro University, Sweden. 5. 5 Eriksholm Research Centre, Snekkersten, Denmark. 6. 6 Hearing Systems Group, Department of Electrical Engineering, Technical University of Denmark, Kongens Lyngby, Denmark.
Abstract
Tinnitus can have serious impact on a person's life and is a common auditory symptom that is especially comorbid with hearing loss. This study investigated processing effort required for speech recognition in a group of hearing-impaired people with tinnitus and a control group (CG) of hearing-impaired people without tinnitus by means of pupillary response. Furthermore, the relationship between the pupillary response, self-rating measures of tinnitus severity, and fatigue was examined. Participants performed a speech-in-noise task with a competing four-talker babble at two speech intelligibility levels (50% and 95%) with either an active or inactive noise-reduction scheme while the pupillary response was recorded. Tinnitus participants showed significantly smaller time-dependent pupil dilations and significantly higher fatigue ratings. No correlation was found for the tinnitus severity and pupillary response, but a significant correlation was found between the tinnitus severity and fatigue. As participants with tinnitus generally reported higher fatigue and showed smaller task-evoked pupil dilations, it was speculated that this may suggest an increased activity of the parasympathetic nervous system, which governs the bodily response during rest. The finding that tinnitus participants showed higher fatigue has clinical implications, highlighting the importance of taking steps to decrease the risk of developing long-term fatigue. Finally, the tinnitus participants showed reduced pupillary responses when noise reduction was activated, suggesting a reduced effort from hearing aid signal processing.
Tinnitus can have serious impact on a person's life and is a common auditory symptom that is especially comorbid with hearing loss. This study investigated processing effort required for speech recognition in a group of hearing-impairedpeople with tinnitus and a control group (CG) of hearing-impaired people without tinnitus by means of pupillary response. Furthermore, the relationship between the pupillary response, self-rating measures of tinnitus severity, and fatigue was examined. Participants performed a speech-in-noise task with a competing four-talker babble at two speech intelligibility levels (50% and 95%) with either an active or inactive noise-reduction scheme while the pupillary response was recorded. Tinnitusparticipants showed significantly smaller time-dependent pupil dilations and significantly higher fatigue ratings. No correlation was found for the tinnitus severity and pupillary response, but a significant correlation was found between the tinnitus severity and fatigue. As participants with tinnitus generally reported higher fatigue and showed smaller task-evoked pupil dilations, it was speculated that this may suggest an increased activity of the parasympathetic nervous system, which governs the bodily response during rest. The finding that tinnitusparticipants showed higher fatigue has clinical implications, highlighting the importance of taking steps to decrease the risk of developing long-term fatigue. Finally, the tinnitusparticipants showed reduced pupillary responses when noise reduction was activated, suggesting a reduced effort from hearing aid signal processing.
Entities:
Keywords:
effort; fatigue; hearing aids; hearing impairment; need for recovery; noise reduction; pupil dilation; pupillometry; tinnitus
Tinnitus is a common auditory symptom that can affect all people with or without
hearing loss (Langguth, Kreuzer,
Kleinjung, & De Ridder, 2013). Tinnitus is defined as the perception
of meaningless sound that occurs without any external sound stimuli (Langguth et al., 2013). The
literature estimates that 5% to 15% of the global adult population have chronic
tinnitus (Axelsson &
Ringdahl, 1989; Hoffmann & Reed, 2004; Khedr et al., 2010; Lasisi, Abiona, & Gureje, 2010; Michikawa et al., 2010;
Nondahl et al., 2002;
Ries, 1994; Shargorosky, Curhan, &
Farwell, 2010; Xu
et al., 2011). The effect and impact of tinnitus vary from nonexistent to
profound (Baguley, Andersson,
McFerran, & McKenna, 2013), and the majority of people are relatively
unaffected by their tinnitus. For approximately 10% to 20% of tinnitus sufferers,
tinnitus can affect sleep, mood, and daily life activities (Davis & Rafaie, 2000). It is generally
estimated that approximately 2% of the tinnitus population is so severely affected
by their tinnitus that quality of life is severely impaired (Langguth et al., 2013; Rossiter, Stevens, & Walker,
2006). Although it is well established that tinnituspatients
subjectively report that tinnitus disturbs the cognitive mechanisms of concentration
(Andersson, Lyttkens, &
Larsen, 1999; Tyler
& Baker, 1983), evidence for the involvement of tinnitus in other
cognitive mechanisms is weak. Whether tinnitus affects performance on cognitive
tasks is under debate, especially regarding its effects on behavioral and objective
measures, and further research within the field is warranted (Andersson & McKenna, 2006; Mohamad, Hoare, & Hall,
2016; Tegg-Quinn,
Bennet, Eikelboom, & Baguley, 2016). For the cognitive component of
working memory (WM), results vary. Rossiter et al. (2006) found that tinnitusparticipants performed worse on a reading span test, suggesting a poorer WM
capacity. Similarly, Stevens,
Walker, Boyer, and Gallagher (2007) found significantly slower reaction
times on a dual-task paradigm for tinnituspatients, suggesting a poorer WM
performance in high-demand tasks. However, neither study controlled for hearing
loss, which may have been the main factor contributing to the group effects (Tegg-Quinn et al., 2016).
Hallam, McKenna, and
Shurlock (2004) compared tinnitus and nontinnitus patients with similar
hearing status on performance with a dual task and found poorer performance in the
tinnituspatients. For the component of attention, Cuny, Norena, El Massioui, and Chéry-Croze
(2004) investigated auditory attention in individuals with unilateral
tinnitus. They found that participants with unilateral tinnitus had more difficulty
shifting attention to the nontinnitus ear, and that the participants had a biased
attention toward the tinnitus ear. They also found tinnitus severity to be
associated with less efficient attention capability. Stevens et al. (2007) found similar results
in their study in which they investigated reaction times using the Stroop color–word
test, where words for colors are written in alternating corresponding and
noncorresponding colors. The tinnitus group (TG) had slower reaction times, and the
authors interpreted that to mean tinnitus causes an impairment in attention . In
contrast, Heeren et al.
(2014) found no significant difference between tinnitus and control
participants in an attention test. The support behind tinnitus affecting cognitive
mechanisms is mixed, and it is deemed necessary to explore the degree to which
factors such as hearing loss may be involved. The literature has suggested that only
few differences in objective measures are found when individuals with hearing loss
are used as controls, perhaps because hearing loss and tinnitus may have similar
cognitive consequences (Andersson
& McKenna, 2006; McKenna & Hallam, 1999; Tegg-Quinn et al., 2016).Research on possible effects of tinnitus on the cognitive mechanism of effort is
unexplored. Effort can be defined as the intentional allocation of resources that
are applied to overcome obstacles when pursuing a goal in a task (Pichora-Fuller et al.,
2016). For processing effort, the applied resources are mental resources, and
two factors are involved in processing effort. One factor is the processing demand,
which is created by the task or the environment in which the processing occurs. The
other factor is related to the listener and can be dependent on hearing loss (Mattys, David, Bradlow, &
Scott, 2012; Wendt,
Koelewijn, Ksiazek, Kramer, & Lunner, 2017), cognitive abilities such
as WM (Koelewijn, Zekveld,
Festen, & Kramer, 2014), or individual motivation to expend mental
effort (Pichora-Fuller et al.,
2016). Based on the aforementioned research, it is probable that tinnitus
affects processing effort, as tinnitus may affect factors related to the listener,
for example, cognitive abilities.Effort (as the umbrella term for processing effort, listening effort, and cognitive
effort) can be assessed with behavioral, subjective, and physiological methods
(Ohlenforst et al.,
2017; Pichora-Fuller
et al., 2016). Within the physiological methods, the pupillary response
is considered to reflect processing load (Beatty, 1982; Pichora-Fuller et al., 2016; Zekveld & Kramer,
2014). The task-evoked pupil dilation response can be associated with both
the sympathetic nervous system (SNS) and parasympathetic nervous system (PNS)
branches of the autonomic nervous system. These branches are in the control of
different responses, where the SNS controls the “fight or flight” response necessary
in stressful situations, and the PNS controls the “rest or digest” response, which
is active in situations that do not require the body to prepare for fighting or
fleeing. Although both branches are active during pupil dilation, it is mainly
governed by the SNS system (Kahneman, 1973), but the balance of the branches may be askew in certain
populations (Wang et al.,
2018). Pupillometry has been applied to obtain measures of cognitive
processing load (Beatty,
1982; Kahneman,
1973). Furthermore, it has been used successfully as an index of
effortful listening during speech recognition to investigate the effect of hearing
status, hearing aid (HA) signal processing, or task difficulty on effort, within the
field of hearing-related research (e.g., Wendt et al., 2017; Zekveld, Kramer, & Festen, 2010).Those
studies measured pupil dilation, while participants recognized everyday sentences in
background noise. Commonly, three different parameters of pupil dilation are
assessed with pupillometry in those studies: the peak of the pupil dilation (PPD),
the latency of the peak dilation, and the mean pupil dilation within a given time
frame (Zekveld, Kramer, &
Festen, 2011). It has been suggested that the PPD reflects momentary,
task-induced effort, and it has been demonstrated that the pupil dilation can change
according to hearing status and task demands. For example, Ohlenforst et al. (2017) showed that PPD
changed depending on the listener’s hearing abilities and that individuals with
hearing loss had large PPDs over a wider range of signal-to-noise ratios (SNRs)
compared with normal hearing (NH) controls, whose PPD was at its maximum in a
narrower range of SNRs.Although the PPD has traditionally been used as a measure in pupillometry studies,
some recent studies show that other ways of analyzing pupillary response can be more
sensitive (Kuchinsky et al.,
2013; Wendt et al.,
2018; Winn, Edwards,
& Litovsky, 2015). For instance, growth curve analysis (GCA) has been
applied in recent studies to model the change of the pupillary response over time,
rather than analyzing static effects at a particular point in the pupil dilation
(Mirman, Dixon, &
Magnuson, 2008). With GCA, parameters of the pupillary response, such as
steepness of the dilation, the overall shape, and the overall slope, can be
investigated. As the GCA may reveal the impact of tinnitus on the time course of the
pupillary response, which may not be reflected in the PPD, it was included in this
study.Many persons with hearing loss report tinnitus. However, to the best of the authors’
knowledge, the impact of tinnitus on processing effort, as indicated by the
pupillary response, has not yet been studied. As previous studies have suggested
that several listener-related factors may influence the pupil response evoked by a
task, such as the hearing status (Ohlenforst et al., 2017; Zekveld et al., 2011),
cognitive abilities such as WM capacity (Zekveld & Kramer, 2014), and the age of
the participant (Zekveld et al.,
2011), it seems pertinent to investigate whether tinnitus is another
listener-related factor that may impact processing effort.In this study, it was hypothesized (H1) that individuals with tinnitus and hearing
loss (TG) will display an increased task-evoked processing effort as assessed by the
pupillary response compared with those with hearing loss who do not have tinnitus
(CG). As it has already been shown, listener-dependent factors such as hearing loss
can increase processing effort; thus, it seems reasonable to suspect that tinnitus
further adds to effort.In addition to listener-dependent factors, it has also been shown that signal-related
factors influence processing effort (Koelewijn, Zekveld, Festen, & Kramer,
2012; Ohlenforst
et al., 2017; Wendt
et al., 2017). It has previously been seen that HA processing can reduce
listening effort for people with hearing loss. Wendt et al. (2017) investigated the
benefit of HA signal processing by measuring the PPD during a speech-in-noise test
(hearing in noise test [HINT], Nilsson, Soli, & Sullivan, 1994) in participants
with aided hearing loss. Pupillary response was measured at two different
intelligibility levels, and two different settings of the HAs, that is, with an
active and inactive noise reduction (NR) scheme. They found that the PPD decreased,
indicating a reduced processing effort, as a function of the intelligibility (from
50% to 95%) and as a function of the NR scheme. Interestingly, they demonstrated a
reduced processing effort even at ceiling performance levels.Based on the aforementioned rationale, it was hypothesized (H2) that applying an NR
scheme would significantly reduce processing effort as assessed by pupillary
response. Furthermore, based on previous research showing that tinnitus severity was
related to less efficient attention capability (Cuny et al., 2004), it was hypothesized
(H3) that subjective tinnitus severity would correlate with objective PPD, such that
the worse you perceive your tinnitus, the more effort you expend in the task.Being required to spend more effort in order to meet demands (such as understanding
speech with a hearing loss) may accumulate, with the consequence of fatigue over
time. Fatigue is a complex phenomenon that can occur in the short term as a
consequence of spending extra mental effort during, for example, a challenging task
or a shorter period of increased demands at work. It can also be a continuous state
as a consequence of a persistent disease or lack of possible recovery after longer
periods of stress (Hornsby,
Naylor, & Bess, 2016)—and perhaps tinnitus. Implications suggest that
people with hearing loss are more fatigued than normal-hearing individuals (Kramer, Kapteyn, & Houtgast,
2006; Nachtegaal,
Festen, & Kramer, 2012). To the best of our knowledge, no study has
investigated the presence of fatigue in individuals with tinnitus. However, research
suggests that tinnitus is associated with emotional exhaustion (Hébert, Canlon, & Hasson,
2012), sleep disturbance (Alster, Shemesh, Ornan, & Attias, 1993),
and insomnia (Crönlein, Langguth,
Geisler, & Hajak, 2007; Folmer & Griest, 2000). In line with
the hypothesis that people with tinnitus expend more effort and the suggestion that
consequences of effort accumulate over time, this study also investigated
self-reported daily life fatigue. Consequently, it was hypothesized (H4) that people
with tinnitus and hearing loss show increased ratings of self-reported daily life
fatigue than people with hearing loss and no tinnitus and that self-rated tinnitus
severity will correlate with self-rated fatigue, meaning the worse you perceive your
tinnitus, the more fatigued you are likely to feel.
Materials and Methods
Participants
Sixteen participants with chronic tinnitus lasting at least 6 months with an
average age of 62 years, ranging from 45 to 79 years, were included in the TG,
and 16 participants with an average age of 67 years, ranging from 47 to 84
years, were included in the CG. All participants were native Danish speakers and
had bilateral sensorineural hearing loss (Figure 1). The pure-tone average from 500
to 4000 Hz ranged from 18 to 75 dB HL with an average of 42 dB HL for the TG and
from 36 to 66 dB HL with an average of 49 dB HL for the CG. The participants
were all experienced and bilaterally fitted HA users, having used HAs for the
majority of the day for at least 3 months, and had no history of eye disease or
eye operations. Independent samples t-tests were performed to
compare the groups. No significant differences were found on age and gender nor
between the 4-point averages on the right and left ear (cf. Table 1). Participants
were given both verbal and written instructions prior to giving written consent.
The ethics of this project were approved by the Research Ethics Committees of
the Capital Region of Denmark.
Figure 1.
Average (between left and right ears) hearing curve for groups.
TI = tinnitus group, CG = control group.
Table 1.
Results of Independent Samples Test on Participants.
F(df)
Significance
t
Age
2.8 (30)
.107
−1.45
Gender
0.2 (30)
.629
0.34
PTA4 Right
1.4 (30)
.254
−0.49
PTA4 Left
0.8 (30)
.375
0.14
p < .05.
Average (between left and right ears) hearing curve for groups.
TI = tinnitus group, CG = control group.Results of Independent Samples Test on Participants.p < .05.
Speech Material and Noise Conditions
Sentences from the Danish HINT (Nielsen & Dau, 2011) were presented
in a four-talker babble consisting of four overlapping talkers. The masker was
constructed with four single audio files of two male and two female speakers.
All of them were nonprofessional speakers reading text from a newspaper. All
audio files had an equivalent long-term average frequency spectrum to the Danish
HINT sentences, and speech pauses longer than 0.05 s were removed from the
recordings. A spatial setup (Figure 2) of five loudspeakers was used in which the target HINT
sentences were presented from the front of the speaker (at 0°) and the
four-talker babble masker was presented from the sides and back of the
participant. Each competing talker of the babble masker was presented spatially
from one of the four loudspeakers. One male and one female speaker were always
presented from the 90° and 270° azimuth position, ensuring that the effect of
competing talkers was balanced across all conditions.
Figure 2.
Spatial set-up, with participant in the center, stimulus presented at
0°, noise at 90°, 270°, 210°, and 150°, and the eye tracking camera
placed in front of the participant.
Spatial set-up, with participant in the center, stimulus presented at
0°, noise at 90°, 270°, 210°, and 150°, and the eye tracking camera
placed in front of the participant.A single trial consisted of the duration of the masker presentation that started
3 s prior to the HINT sentence onset and terminated 3 s after sentence offset.
Thus, each trial length varied according to the length of the HINT sentence,
with a mean duration of 7.5 s. Subsequent to the offset of noise, participants
were asked to repeat back the sentence to the best of their ability. Each
participant performed three training lists of 20 sentences each at the beginning
of the session, where the first list was performed in order to familiarize
themselves with the procedure, and the second and third lists were performed to
estimate the 50% and 95% speech reception threshold (SRT50 and SRT95). SRT50 and
SRT95 were defined as the individual levels of SNRs where the participant
recognized 50% and 95%, respectively.
NR Scheme
The participants were tested in two different conditions while wearing HAs. In
Condition 1 (NoNR), no NR scheme was applied, and amplification was provided
with only the proprietary rationale, Voice Aligned Compression (VAC; Le Goff, 2015). The VAC
rationale is a curvilinear wide dynamic range compression and is characterized
by providing less compression at high input levels and more at low input levels,
with a compression knee point between 30 and 40 dB SPL, depending on the
frequency region and magnitude of hearing loss.In the other HA condition (NR), an NR scheme was applied in addition to the VAC
rationale prescribed amplification. This scheme consisted of different blocks of
processing. First, three fixed beamformers combined two microphone signals in
order to enhance omnidirectional and rear cardioid signals. Next, a two-channel
minimum variance distortion-less response beamformer (Kjems & Jensen, 2012) was applied
to attenuate interfering signals using spatial filtering when the signals did
not come from the front of the listener where the target was located. Then, a
single-channel postfilter (Jensen & Pedersen, 2015) removed interfering noise in
postprocessing of the signal.
The Tinnitus Handicap Inventory (THI; originally developed by Newman, Jacobsen,
& Spitzer, 1996) assesses the degree of severity of tinnitus in terms of
quality of life. The Danish version of the THI (Zachariae et al., 2000) was used in
this study. The participants in the TG were asked to fill out the THI at the
beginning of the session. The THI consists of 25 questions (e.g., “Because of
your tinnitus, is it difficult for you to concentrate?”) where answer options
are either yes (4 points), sometimes (2
points), or no (0 points). The THI scores range from 0 to 100
points, which correspond to a range of tinnitus categorizations (very
mild, mild, moderate,
severe, or catastrophic). The average THI score
was 38, corresponding to moderate tinnitus, ranging from 20 (mild tinnitus) to
70 (severe tinnitus). One participant was excluded due to a THI score of 12
(very mild tinnitus).
Thermometer
The Tinnitus Thermometer (IDA Institute) is a tool that gauges how the person
feels about their tinnitus at that very moment. It is a smiley face scale with
corresponding numbers from 0 to 10, where 0 represents no
tinnitus, and 10 represents worst tinnitus Some
patients with tinnitus have varied experiences in how their tinnitus affects
them (e.g., Stouffer &
Tyler, 1990), and the tool can be used to assess how a patient feels
about their tinnitus at a given moment. The thermometer was not used for
statistical analysis, but it was applied to ensure that the participant was
actually experiencing tinnitus on the day of the experiment.
Need for Recovery scale
The Need for Recovery (NFR; developed by van Veldhoven & Broersen, 2003) is
intended as a surveillance approach to discover early signs of fatigue and
prevent them from developing into long-term fatigue that could require a leave
of absence. The NFR is an 11-item scale that measures symptoms of daily-life
fatigue where the subject must answer either “yes or “no”. Yes
indicates the unfavorable situations, except for one question, whereas
No indicates the unfavorable situation. To calculate the
score, the number of yes answers (and the single item where
no is unfavorable) are divided by the total number of items
(11) and then multiplied by a 100 to get the score as percentage. The greater
the score, the greater the NFR, indicating a greater level of fatigue. A Danish
translation was used in this study.
Apparatus and Spatial Setup
Pupillary response was measured using an eye-tracker system (iView X RED System;
Sensor-Motoric Instruments, Teltow, Germany) that recorded pupil dilation with a
sampling rate of 60 Hz. The infrared camera with an automatic eye and head
tracker was placed in front of the participant with a distance of approximately
60 cm to measure both eyes remotely. Stimuli presentation was controlled using
MATLAB-based programming (MathWorks, Natick, MA). Auditory signals were routed
through a sound card (RME Hammerfall DSB multiface II; Audio AG, Haimhausen,
Germany) and played back via five Genelec 8040A loudspeakers (Genelec Oy,
Iisalmi, Finland). The experiment was performed in an acoustics-treated,
double-walled IAC-NORDIC (IAC Acoustics, Hvidovre, Denmark) sound booth.
Participants’ pupil x and y traces of both
eyes were recorded to detect horizontal and vertical eye movements,
respectively. For the analysis, only data from the left eye were used.
Pupil Data Analysis
Peak pupil dilation
To avoid any potential effects of training, excitement, or arousal, the pupil
traces from the first five trials were excluded from the data analysis. The
recordings from the pupillary response of the remaining 20 trials were
analyzed as follows: In the first step, eye blinks, eye movements, and other
artifacts were removed from the recordings. This was achieved by removing
pupil diameter values that exceeded the mean diameter by more than three
standard deviations (SDs). Trials that contained more than 20% eye-blinks,
eye movements, or missing data, and eye-movements larger than 10° from the
fixation target, were excluded from the analysis. The detected eye blinks
and movements were removed using a linear interpolation. The interpolation
was applied 5 samples before and ended 10 samples after the blinks or
movements. In a second step, high-frequency artifacts were removed by
passing a 5-point moving average smoothing filter over individual trials.
The third step included a baseline correction for all remaining traces. A
baseline value was estimated using the mean pupil size approximately 1 s
before sentence onset (where the participant listened to only noise; Figure 3). This
baseline value was then subtracted from the whole pupil curve within each
trial. The baseline-corrected pupil responses were then averaged across all
remaining trials for each condition. Finally, the PPD was calculated for
each participant and each condition (NoNR L50, NR L50, NoNR L95, and NR
L95), which was defined as the maximum pupil dilation within the time
interval between the sentence onset and noise offset.
Figure 3.
Normalized pupil dilation over time as a function of sentence in
noise presentation.
Normalized pupil dilation over time as a function of sentence in
noise presentation.
Before investigating the hypotheses, an ANOVA was conducted on the speech
recognition performance. This was to confirm that the groups did not differ on
performance, meaning that performance would not be speculated to cause any pupil
differences between groups. To test whether the TG group showed increased
task-evoked processing effort as assessed by the pupillary response (H1), an
ANOVA was conducted on the PPD and on the GCA. The above analyses were also
conducted to test H2, that is, applying an NR scheme would significantly reduce
processing effort. To test whether the worse you perceive your tinnitus, the
more effort you expend in a task (H3), a Pearson correlation and Spearman’s rho
analyses were carried out to investigate correlations between subjective
measures of tinnitus and objective pupil data. Finally, to test H4, that is, the
TG would show increased self-reported daily life fatigue and that tinnitus
severity would correlate with fatigue severity, a t-test was
conducted on the groups’ subjective measures of fatigue, and correlation
analyses were conducted between the subjective tinnitus and fatigue measures. In
addition, to investigate an effect of the experiment over time, a
t-test was conducted on the individual pupil baselines for
participants’ first and last condition of the experiment.
Results
Speech Recognition Performance
Primarily, a t-test was conducted to investigate differences in
the individually adapted SNRs. There were no significant differences in the SNRs
in the 50% intelligibility level between groups, F(1,
30) = 0.0, p = .99 nor the 95% level, F(1,
30) = 1.8, p = .29. For the performance, Figure 4 shows the mean response accuracy
across participants for the speech recognition task. The highest accuracy was
measured for the L95 conditions (between 92.7% and 97.9% for TG and 94.8% and
98.1% for CG). For the L50, the recognition performance was between 61.8% for
the NoNR and 89.6% for the NR for the TG, and 61.9% for the NoNR and 89.3% for
the NR for CG. For both groups, speech recognition performance during the NoNR
L50 condition was quite high. The performance on the speech recognition task was
analyzed using an ANOVA with intelligibility level (L50 and L95) and NR scheme
(NoNR, NR) as the within-subject factors and group as the between-subject
factor. The ANOVA revealed a main effect of intelligibility,
F(1, 30) = 247.6, p < .001, indicating a
significant improvement in speech recognition at L95, but no significant effect
of the group, F(1, 30) = 0.582, p = .45. In
addition, a main effect of NR was measured, F(1, 30) = 265.6,
p < .001, indicating significantly increased speech
recognition when NR was applied but no significant effect of the group,
F(1, 30) = 0.679, p = .42. Finally, an
interaction effect between intelligibility and NR was found,
F(1, 30) = 132.3, p < .001. Most
importantly, the lack of significant group differences in the aforementioned
factors makes the groups adequate for comparisons on pupil dilation.
Figure 4.
Speech intelligibility performance in four conditions.
Speech intelligibility performance in four conditions.
Does Tinnitus Affect Pupillary Response?
The PPD was calculated based on the remaining trials for each condition. The
PPDs are plotted in Figure
5 for all four test conditions. The effect of intelligibility
level, NR, and group on PPD was analyzed by ANOVA with intelligibility level
(L50 and L95) and NR scheme (NoNR and NR) as the within-subject factors and
with group as the between-subject factor. The ANOVA revealed a main effect
of intelligibility, F(1, 31) = 10.1,
p < .005, indicating a significantly increased PPD at
L50. An effect of the NR on PPD was found, F(1, 31) = 10.4,
p < .005, indicating a significantly reduced PPD for
the NR conditions. However, no significant differences between groups on
level, F(1, 30) = 0.3, p = .59, or on NR,
F(1, 30) = 1.8, p = .19, were found.
These results may indicate that tinnitus does not further add to the PPD in
a speech recognition in noise task. No significant differences in the pupil
baseline values were found between the four conditions nor between groups.
Figure 5.
Peak pupil dilation (mm) for groups in four conditions.
Peak pupil dilation (mm) for groups in four conditions.
Pupil GCA
As no differences were identified between the groups in the PPD, the GCA was
applied to model further changes of the pupillary response over time between
both groups. The results (shown in Figures 6–9) depict the pupil dilation data
relative to the baseline and fitted model responses as a function of time.
An ANOVA Type III with a p value criterion of <.05 was
conducted on the individual coefficients to examine any significant
differences in the coefficients between groups related to the condition
(NoNRL50, NR L50, NoNRL95, and NRL95). Type III was chosen because it
ensures consistency in comparison. Table 2 provides the results in
which beta values associated with each polynomial term are presented. The
GCA demonstrated that TG showed significantly smaller pupil dilations in the
intercept, linear, and quadratic terms in condition NoNRL50
(β = 0.05; p = .001, β = 0.11;
p = .001, and β = 0.07; p = .001), the
intercept and linear terms for condition NoNRL95 (β = 0.10;
p = .001 and β = 0.06; p = .001), and for
condition NRL95 (β = 0.17; p = .001 and β = 0.15;
p = .001).
Figure 6.
GCA for groups in condition NoNRL50. TI = tinnitus group,
CG = control group.
Figure 7.
GCA for groups in condition NRL50. TI = tinnitus group,
CG = control group.
Figure 8.
GCA for groups in condition NoNRL95. TI = tinnitus group,
CG = control group.
Figure 9.
GCA for groups in condition NRL95. TI = tinnitus group,
CG = control group.
Table 2.
Linear Mixed Model Fit by Maximum Likelihood Formula and Output
of the Analysis of Variance Type iii on the GCA for the
Pupillary Responses Recorded in Conditions for Two Groups.
Formula code: PupilDilation ∼
(1 + Linear + Quadratic + Cubic) ×
Group + (1 + Linear|Subject)
NoNR L50 TG > CG
NR L50 TG > CG
NoNR L95 TG > CG
NR L95 TG > CG
Term
β
F(df)
p
β
F(df)
p
β
F(df)
p
β
F(df)
p
Intercept
0.05
14.1 (1, 1094)
***
0.00
0.38 (1, 1134)
1
0.03
29.4 (1, 1135)
***
0.17
46.61 (1, 1098)
***
Linear
0.11
25.8 (1, 1092)
***
0.00
0.07 (1, 1133)
1
0.08
16.9 (1, 1135)
***
0.15
39.2 (1, 1094)
***
Quadratic
0.07
18.4 (1, 1098)
***
0.00
0.40 (1, 1135)
1
−0.02
0.21 (1, 1135)
1
0.01
2.1 (1, 1098)
1
Cubic
0.00
0.0 (1, 1098)
1
0.00
0.09 (1, 1135)
1
−0.01
0.01 (1, 1135)
1
0.01
3.1 (1, 1098)
1
Note.
F(df) = F
value with (degrees of freedom). Beta values represent a
contrast estimate, such that they signify how much greater
the effect was for the TG compared with the CG.
TG = tinnitus group; CG = control group.
p < .001.
**p < .01.
GCA for groups in condition NoNRL50. TI = tinnitus group,
CG = control group.GCA for groups in condition NRL50. TI = tinnitus group,
CG = control group.GCA for groups in condition NoNRL95. TI = tinnitus group,
CG = control group.GCA for groups in condition NRL95. TI = tinnitus group,
CG = control group.Linear Mixed Model Fit by Maximum Likelihood Formula and Output
of the Analysis of Variance Type iii on the GCA for the
Pupillary Responses Recorded in Conditions for Two Groups.Note.
F(df) = F
value with (degrees of freedom). Beta values represent a
contrast estimate, such that they signify how much greater
the effect was for the TG compared with the CG.
TG = tinnitus group; CG = control group.p < .001.
**p < .01.
Does Tinnitus Severity Affect Pupillary Response?
Tinnitus Handicap Inventory
The THI was applied to assess the TGparticipants’ self-perceived tinnitus
severity. The average THI score was 38 (SD 15.5), ranging
from 20 to 70, with N = 9 in the mild category,
N = 6 in the moderate category, and
N = 1 in the severe category. To investigate relationships
between tinnitus self-ratings and processing effort (H3), a Pearson
correlation analysis was conducted. No significant correlation was found
between any measures, except for the THI and the self-rating of daily life
fatigue (NFR), where a significant, moderate correlation was found
(r = .57, p < .05; cf. next
section). No significant correlations were found between the THI and the PPD
in any conditions. In addition, a Spearman’s rho analysis was conducted
between the THI and the individual coefficients for the intercept and linear
terms of the growth curve. This was performed in order to investigate
whether there were correlations between the severity of the tinnitus
(assessed by THI) and the average temporal changes of the pupil dilation. No
significant correlations were found between the THI and any of the pupil
variables (r = .24, p = .36 for NoNR50;
r = − .08, p = .77 for NR50;
r = −.08, p = .76 for NoNR95; and
r = −.04, p = .88 for NR95).
Does Tinnitus and Tinnitus Severity Affect Fatigue?
NFR, pupil baselines
The NFR was performed to measure participants’ level of self-reported daily
life fatigue. The average test result of the TG was 51.5%
(SD 28.9%), ranging from 9% to 90%, and for the CG, the
average was 23.1% (SD 18.1%), ranging from 9% to 63%. An
independent samples t test showed a significant difference
in the fatigue scores, F(1, 30) = 6.1,
p = < .005, indicating a greater level of fatigue for
the TG. Figure 10
shows the individual NFR scores for each group, where the scores have been
sorted from smallest to largest scores in each group.
Figure 10.
Individual NFR scores on groups, sorted from smallest to
largest.
Individual NFR scores on groups, sorted from smallest to
largest.A significant, moderate correlation was found between the THI and the NFR
scores, (r = .58, p < .05), indicating
that the greater the degree of tinnitus severity, the greater the level of
fatigue. Figure 11
displays a scatterplot of the THI scores as a function of NFR scores.
Figure 11.
Scatterplot of THI as a function of NFR.
Scatterplot of THI as a function of NFR.Ultimately, because group differences on NFR were identified, it was
investigated whether the course of the experiment had an effect on pupil
baseline. A paired samples t test showed a significant
reduction in the pupil baseline from the first to the last condition of the
experiment, F(1, 30) = 3.6, p = .001, with
a mean difference of 0.22 mm, but no significant difference between groups
(p = .12 for the first condition and
p = .08 for the last condition).
Discussion
This study investigated the effect of tinnitus on processing effort as indicated by
the pupillary response while recognizing sentences in noise in a group of
hearing-impaired (HI) people with tinnitus. Pupillary response was measured while
participants were performing the Danish speech-in-noise test at two different speech
intelligibility levels (L50 and L95) with an NR scheme either inactive or active
(NoNR and NR). To the best of our knowledge, this is the first study that has
examined the effect of tinnitus on effort by means of pupillometry during speech
recognition in noise.Generally, the pupil data analysis revealed a main effect of speech intelligibility
and NR on pupil dilation, which corroborates previous pupillometry studies (Ohlenforst et al., 2017;
Wendt et al., 2017;
Zekveld et al., 2010,
2011). With regard to
the effect of tinnitus on effort, it was hypothesized (H1) that the TG would show
greater pupillary responses, indicating a greater task-induced effort; furthermore,
it was hypothesized (H2) that an NR scheme would reduce the pupillary responses. It
was also hypothesized (H3) that the subjective measure of the perceived severity of
the tinnitus would correlate with the pupillary response parameters, such that the
worse the tinnitus was experienced, the greater the effort that was employed in the
recognition task. Furthermore, that the subjective measure of tinnitus would
correlate with subjective measure of self-reported daily life fatigue and NFR,
indicating that the last would be greater in tinnituspatients with greater tinnitus
severity. Finally, it was hypothesized (H4) that the TG would show significantly
increased NFR than the CG. It was also investigated if the pupil baselines were
affected over time from the beginning to the end of the experiment. In the following
section, the results will be discussed with regard the above hypotheses.
Effect of Tinnitus on Processing Effort
The results indicated that tinnitus does not seem to have a significant effect on
either the recognition performance or the PPD in any of the four conditions. A
GCA was employed to quantify the influence of tinnitus on pupil dilation across
time. The analyses revealed significant differences between the TG and CGs in
the overall mean and the overall slope of the pupillary response in three out
four conditions, as well as the shape of the primary inflection point of the
curve in one condition. Interestingly, the CG showed pupil dilations with
greater overall mean and overall slope. This is contradictory to the
hypothesis.It is possible that tinnitus affects processing effort but that PPD is not a
sufficiently sensitive measure for detecting it. This lack of sensitivity is
supported by the GCA analysis, which demonstrated significantly smaller overall
level and slope of the curves in the TG in three of four conditions. Because the
groups were performing equally on speech recognition and have no significantly
different SNRs, age, or hearing loss, it may seem counterintuitive that
individuals with tinnitus and hearing loss should have smaller
dilations, in the light of the research that has shown that
larger peaks of dilations are associated with greater
effort (e.g., Wendt et al.,
2017; Zekveld
& Kramer, 2014). However, previous studies that compared HI to NH
people found that HI actually shows smaller PPDs than NH (Kramer et al., 2006; Wang et al., 2017;
Zekveld et al.,
2011) in some situations. Although this study did not find the TG to
have smaller PPDs than the CG, the GCA showed that on temporal changes, the TG
in general had smaller dilations while performing the task. Furthermore, this
study found significantly increased NFR scores in the TG, indicating a group
effect of (chronic) fatigue. Previous research (Wang et al., 2017) found that increased
levels of NFR were associated with reduced task-evoked pupil dilation. In this
study, the TG showed significantly smaller dilations on the GCA and
significantly increased levels of NFR, a self-assessment of daily life fatigue.
It is not clear whether it is the tinnitus or the higher level of NFR that
caused differences in the pupillary response, and likewise whether it is the
tinnitus that causes a greater NFR, or an increased daily life fatigue that
worsens tinnitus symptoms. Nevertheless, it is speculated that the tinnituspatients may have greater inhibition of the PNS, which could have caused the
relatively smaller temporal changes in pupillary responses. Wang et al. (2018)
applied pupillometry to investigate processing effort required for speech
recognition in noise. Interestingly, they tested this in both light and dark, as
the SNS and PNS have different amounts of contribution to the pupil response
according to the amount of light. By testing pupil dilation in both light and
dark, the authors were able to disentangle the contribution to the pupil
response for those two branches of the autonomic nervous system. They found that
individuals with greater needs for recovery (independent of hearing status)
showed smaller PPDs when tested in light, and they speculated that a smaller
dilation indicated a higher PNS activity. They reason that the PNS is essential
during recovery from stress, such that individuals who on a daily basis
experience a greater NFR (i.e., a greater level of fatigue) may have an
excessively activated PNS in stress situations, when the SNS should be in
charge. Likely, tinnitus affects the ability to “wind down,” as tinnitus is
often most disturbing in otherwise calm situations, such as reading in quiet or
attempting to fall asleep. It may be possible that persons with tinnitus
experience a greater PNS activity as a result of this, thus disturbing the “rest
and digest” response. Wang
et al. (2017) did not find significant differences in NFR between HI
and NH and speculated whether other factors such as anxiety and personality may
be better predictors of daily life fatigue. This study showed that tinnitus may
be a predictor of NFR, highlighting the need for research to control for
tinnitus when investigating topics such as fatigue as well as task-evoked pupil
dilation. Furthermore, previous research (e.g., Jiang et al., 2003) found increased
levels of fatigue in individuals with anxiety, and anxiety has previously been
found to be comorbid with tinnitus (Guitton 2006; Landgrebe & Langguth, 2011; Pattyn et al., 2016),
emphasizing the need to consider tinnitus in patients when conducting research.
The pupil baseline was analyzed for changes from the beginning to the end of the
experiment, to investigate any acute fatigue influence on pupillary responses. A
significant reduction in the pupil baseline was found, but no significant
differences were found between groups. This suggests an effect of acute fatigue
of the experiment on all participants, regardless of the presence of tinnitus or
higher NFR. This effect has previously been reported (e.g., Klingner, 2010). It is
interesting that this effect does not seem to differ between groups, as the TG
showed signs of greater long-term fatigue. An effect of the experiment was found
despite having included two breaks during the experiment, and the freedom of
taking more breaks for the participants.This study further investigated the benefit of an NR scheme for the two groups.
Wendt et al.
(2017) showed that participants with hearing loss show a benefit of
an NR scheme that is applied in modern HAs on effort. We hypothesized that this
effect is also found in the current study, and found no significant difference
between groups in PPD as a function of the active NR scheme. Interestingly, even
though the TG showed smaller dilations, there was a tendency that the reduction
in PPD was larger for the TG than the CG. Thus, even though the TG may have
smaller dilations (possibly due to an increased PNS activity), they still show a
benefit of the signal processing on processing effort that is similar to the CG.
These results have clinical implications, providing evidence to clinicians that
difficult-to-fit patients, such as those with tinnitus, can benefit equally from
having a program in their HAs with advanced signal processing, giving them the
benefit of reduced effort.
Correlations Between Pupillary Response, Tinnitus Severity, and NFR
This study found no significant correlations between tinnitus self-report
measurements and PPDs, nor the average individual coefficients of the GCA model.
There was evidence to support a hypothetical relationship between degree of
tinnitus and pupillary responses (e.g., Stevens et al., 2007, who found slower
reaction times in tinnituspatients; Cuny et al., 2004, who found tinnitus
severity to be associated with attentional disturbances; Rossiter et al., 2006, who found poorer
performance on WM tasks in tinnituspatients). However, it is noted that
discrepancies between subjective measures and performance on behavioral tasks or
objective measurements in tinnitus research are often found (Andersson & McKenna,
2006).As mentioned earlier, the TG was significantly more fatigued based on NFR scores,
and the THI significantly and moderately correlated with NFR. It is unclear
whether fatigue causes tinnitus symptoms to worsen or if tinnitus causes
fatigue, but a relationship between the two seems to exist. This is not
unexpected and is consistent with previous studies. For example, tinnitus has
been found to be connected with emotional exhaustion (Hébert et al., 2012), with sleep
disturbance (Alster et al.,
1993), and with insomnia (Crönlein et al., 2007; Folmer & Griest,
2000). The prevalence of fatigue in participants with tinnitus has
clinical implications. In addition to personal costs, fatigue may have
socioeconomic consequences, because it can result in longer leaves of absences
from work. Persons in employment who suffer from the combination of hearing loss
and tinnitus may be at a similar risk of developing chronic fatigue similar to
other chronic health conditions (Hornsby et al., 2016). Treatments for
tinnitus may benefit from including aspects of treatment that identify and
prevent fatigue from developing, thus keeping the risk of personal and
socioeconomic costs at bay. This is especially relevant as the correlation
between the measure of tinnitus severity and fatigue level indicates that the
worse your tinnitus affects you, the more fatigued you are likely to be.
Limitations
It is noted that there was a large variance in this study in general. The age
span of all participants ranged from 45 to 84 years. The individual SNR
necessary for 50% and 95% also ranged greatly, from −3.7 to 8.9 for the 50%
level and from 1.4 to 12.8 for the 95% level. Although there were no significant
differences between the groups on any of these parameters, some co-varying
factors seem to exist, which could have influenced the individual amount of
processing effort and pupillary response data. For example, increased age is
accompanied by a greater vocabulary and linguistic expertise (Zekveld et al., 2011).
This dynamic may influence the easiness of a speech recognition task such as the
HINT, which was used in this study. However, Zekveld et al. (2011) found that an
increased vocabulary ability was associated with greater processing effort as
measured by pupillometry. They also found that older age was associated with
greater processing effort. In this study, the effects of age and vocabulary were
not assessed, which nonetheless may have contributed to the large variances seen
in the results. Future studies could focus on including factors like age and
vocabulary scores in pupil analysis models.It would be especially useful to investigate the pupillary response for speech
recognition in quiet. Here, it is speculated that there may be a difference
between individuals with tinnitus and hearing loss and individuals with only
hearing loss, as it will be an easy condition for the group with hearing loss,
but a condition where the tinnitus may be audible and disturbing. In
speech-in-noise situations such as the HINT, the sound pressure level is likely
high enough to mask the audibility of the tinnitus. Perhaps the effects of the
tinnitus would be found later (some hours after the experiment where aftermaths
of acute fatigue may occur) and not actually during the task where the tinnitus
may be masked.
Conclusions
This study demonstrated no significant group differences in terms of processing
effort as measured by the PPD between participants with tinnitus and hearing loss
and participants with only hearing loss. However, significant differences in the
overall mean and slope of the pupillary response were measured in the TG, indicating
overall decreased pupillary response in the TG. It was argued that smaller dilations
may be due to greater levels of daily life fatigue and NFR.Benefits of an NR scheme on effort that have previously been seen in research were
found to apply equally well to individuals with tinnitus, as the reduction in PPDs
due to an active NR scheme was similar for both groups.No correlation was found between subjective measures of tinnitus and PPD nor
individual coefficients of the GCA. However, participants with tinnitus reported
significantly increased levels of self-reported daily life fatigue on the NFR, which
may have clinical as well as research implications.
Authors: Hanneke E M van der Hoek-Snieders; Monique Boymans; Bas Sorgdrager; Wouter A Dreschler Journal: Int Arch Occup Environ Health Date: 2020-06-07 Impact factor: 3.015
Authors: Chii-Yuan Huang; Dian-Sian Li; Ming-Hsien Tsai; Chih-Hao Chen; Yen-Fu Cheng Journal: Int J Environ Res Public Health Date: 2022-03-19 Impact factor: 3.390