16 research outputs found
Decoded fMRI neurofeedback can induce bidirectional confidence changes within single participants
© 2017 The Authors Neurofeedback studies using real-time functional magnetic resonance imaging (rt-fMRI) have recently incorporated the multi-voxel pattern decoding approach, allowing for fMRI to serve as a tool to manipulate fine-grained neural activity embedded in voxel patterns. Because of its tremendous potential for clinical applications, certain questions regarding decoded neurofeedback (DecNef) must be addressed. Specifically, can the same participants learn to induce neural patterns in opposite directions in different sessions? If so, how does previous learning affect subsequent induction effectiveness? These questions are critical because neurofeedback effects can last for months, but the short- to mid-term dynamics of such effects are unknown. Here we employed a within-subjects design, where participants underwent two DecNef training sessions to induce behavioural changes of opposing directionality (up or down regulation of perceptual confidence in a visual discrimination task), with the order of training counterbalanced across participants. Behavioral results indicated that the manipulation was strongly influenced by the order and the directionality of neurofeedback training. We applied nonlinear mathematical modeling to parametrize four main consequences of DecNef: main effect of change in confidence, strength of down-regulation of confidence relative to up-regulation, maintenance of learning effects, and anterograde learning interference. Modeling results revealed that DecNef successfully induced bidirectional confidence changes in different sessions within single participants. Furthermore, the effect of up- compared to down-regulation was more prominent, and confidence changes (regardless of the direction) were largely preserved even after a week-long interval. Lastly, the effect of the second session was markedly diminished as compared to the effect of the first session, indicating strong anterograde learning interference. These results are interpreted in the framework of reinforcement learning and provide important implications for its application to basic neuroscience, to occupational and sports training, and to therapy.Link_to_subscribed_fulltex
Multivoxel neurofeedback selectively modulates confidence without changing perceptual performance
© 2016 The Author(s). A central controversy in metacognition studies concerns whether subjective confidence directly reflects the reliability of perceptual or cognitive processes, as suggested by normative models based on the assumption that neural computations are generally optimal. This view enjoys popularity in the computational and animal literatures, but it has also been suggested that confidence may depend on a late-stage estimation dissociable from perceptual processes. Yet, at least in humans, experimental tools have lacked the power to resolve these issues convincingly. Here, we overcome this difficulty by using the recently developed method of decoded neurofeedback (DecNef) to systematically manipulate multivoxel correlates of confidence in a frontoparietal network. Here we report that bi-directional changes in confidence do not affect perceptual accuracy. Further psychophysical analyses rule out accounts based on simple shifts in reporting strategy. Our results provide clear neuroscientific evidence for the systematic dissociation between confidence and perceptual performance, and thereby challenge current theoretical thinking.Link_to_subscribed_fulltex
"Task-relevant autoencoding" enhances machine learning for human neuroscience
In human neuroscience, machine learning can help reveal lower-dimensional
neural representations relevant to subjects' behavior. However,
state-of-the-art models typically require large datasets to train, so are prone
to overfitting on human neuroimaging data that often possess few samples but
many input dimensions. Here, we capitalized on the fact that the features we
seek in human neuroscience are precisely those relevant to subjects' behavior.
We thus developed a Task-Relevant Autoencoder via Classifier Enhancement
(TRACE), and tested its ability to extract behaviorally-relevant, separable
representations compared to a standard autoencoder, a variational autoencoder,
and principal component analysis for two severely truncated machine learning
datasets. We then evaluated all models on fMRI data from 59 subjects who
observed animals and objects. TRACE outperformed all models nearly
unilaterally, showing up to 12% increased classification accuracy and up to 56%
improvement in discovering "cleaner", task-relevant representations. These
results showcase TRACE's potential for a wide variety of data related to human
behavior.Comment: 41 pages, 11 figures, 5 tables including supplemental materia
メタ ニンチ ト イシキ オ サグル タメ ノ オンライン fMRI デコーディッド ニューロ フィード バック
博第1389号甲第1389号博士(理学)奈良先端科学技術大学院大
Unconscious reinforcement learning of hidden brain states supported by confidence
Humans can unconsciously learn to gamble on rewarding options, but can they do so when it comes to their own mental states? Here, the authors show that participants can learn to use unconscious representations in their own brains to earn rewards, and that metacognition correlates with their learning processes