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RECENT PRESENTATIONS
Gevins, A., & Smith, M.E. (2005). Neurophysiologic
measures for neuroergonomics. HCI International 2005, July, Las
Vegas, NV.
ABSTRACT
It is a compelling, futuristic idea to use
brain activation measures as a basis for automated systems to off-load
tasks from an individual if he or she was in a state of high cognitive
workload, or allocate more tasks to an individual that appeared
to have ample reserve processing capacity. Like many great visions,
the devil is in the details. In this presentation we describe recent
progress in the development of multivariate neurophysiologic metrics
of regional cortical brain activation. In a first experiment, EEG
recordings were made during a daytime session while 16 well-rested
participants performed versions of a PC flight simulator task that
were either low, moderate, or high in difficulty. In a second experiment,
the same subjects repeatedly performed high difficulty versions
of the same task during an all night session with total sleep deprivation.
Multivariate EEG metrics of cortical brain activation were computed
for frontal brain regions essential for working memory and executive
control processes crucial for maintaining situational awareness,
central brain regions essential for sensorimotor control, and posterior
parietal and occipital regions essential for visuoperceptual processing.
During the daytime session each of these regional measures displayed
greater activation during the high difficulty task than during the
low difficulty task, and degree of cortical activation correlated
positively with subjective workload ratings in these well-rested
subjects. During the overnight session, cortical activation declined
with time-on-task, and the degree of this decline over frontal regions
correlated negatively with subjective workload ratings. Since participants
were already highly skilled in the task, such changes likely reflect
fatigue-related diminishment of frontal executive capability rather
than practice effects. In a third experiment, a prototype online
system for concurrently deriving regional indices of cortical brain
activation was implemented and tested. The prototype was validated
empirically by using it to gauge brain function in ten well-rested
participants while workload was varied through task difficulty manipulations.
The results confirmed that cortical brain activation indices derived
in real time significantly differed between relatively easy and
relatively difficult tasks. As in the first experiment, frontal
cortical activation correlated positively with subjective workload.
The current results thus indicate that a decrease in cortical activation
in frontal regions may either reflect a decrease in mental workload,
or an increase in mental fatigue and a heightened sense of mental
stress. This is problematic for the development of brain-adaptive
automation systems. Assigning more tasks to an individual in the
former case may indeed serve to increase his or her cognitive throughput,
but in the latter case it could be quite counterproductive, even
resulting in the sort of tragic accident that too often occurs when
fatigued personnel are confronted with unexpected increases in task
demands. For such neuroadaptive systems to successfully modulate
the cognitive task demands placed on an individual in response to
momentary variations in the availability of mental resources as
indexed by neural activation measures, sophisticated user models
with human-like intelligence will need to be developed that take
both task demands and the operator's state of alertness into account.
It is realistic to expect that a great deal of methodical research
will be needed before brain activation measures can actually be
put to use for adaptively augmenting the capabilities of mission-critical
personnel working at demanding and stressful tasks. Further systematic
developments such as future progress with the measurement approach
outlined here will undoubtedly eventually lead to an effective and
practical means for monitoring transient changes in cognitive brain
function that is prerequisite to actual neuroadaptive automation.
Supported by DARPA.
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