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1.
Neuroimage Clin ; 24: 102018, 2019.
Article in English | MEDLINE | ID: mdl-31670069

ABSTRACT

Although behavioral sensitivity to reward predicts the onset and course of mania in bipolar disorder, the evidence for neural abnormalities in reward processing in bipolar disorder is mixed. To probe neural responsiveness to anticipated and received rewards in the context of bipolar disorder, we scanned individuals with remitted bipolar I disorder (n = 24) and well-matched controls (n = 24; matched for age and gender) using Functional Magnetic Resonance Imaging (FMRI) during a Monetary Incentive Delay (MID) task. Relative to controls, the bipolar group showed reduced NAcc activity during anticipation of gains. Across groups, this blunting correlated with individual differences in impulsive responses to positive emotions (Positive Urgency), which statistically accounted for the association of blunted NAcc activity with bipolar diagnosis. These results suggest that blunted NAcc responses during gain anticipation in the context of bipolar disorder may reflect individual differences in Positive Urgency. These findings may help resolve discrepancies in the literature on neural responses to reward in bipolar disorder, and clarify the relationship between brain activity and the propensity to experience manic episodes.


Subject(s)
Anticipation, Psychological/physiology , Bipolar Disorder/physiopathology , Brain Mapping , Impulsive Behavior/physiology , Motivation/physiology , Nucleus Accumbens/physiopathology , Prefrontal Cortex/physiopathology , Reward , Adult , Bipolar Disorder/diagnostic imaging , Female , Humans , Magnetic Resonance Imaging , Male , Nucleus Accumbens/diagnostic imaging , Prefrontal Cortex/diagnostic imaging
2.
PLoS Med ; 15(11): e1002686, 2018 11.
Article in English | MEDLINE | ID: mdl-30457988

ABSTRACT

BACKGROUND: Chest radiograph interpretation is critical for the detection of thoracic diseases, including tuberculosis and lung cancer, which affect millions of people worldwide each year. This time-consuming task typically requires expert radiologists to read the images, leading to fatigue-based diagnostic error and lack of diagnostic expertise in areas of the world where radiologists are not available. Recently, deep learning approaches have been able to achieve expert-level performance in medical image interpretation tasks, powered by large network architectures and fueled by the emergence of large labeled datasets. The purpose of this study is to investigate the performance of a deep learning algorithm on the detection of pathologies in chest radiographs compared with practicing radiologists. METHODS AND FINDINGS: We developed CheXNeXt, a convolutional neural network to concurrently detect the presence of 14 different pathologies, including pneumonia, pleural effusion, pulmonary masses, and nodules in frontal-view chest radiographs. CheXNeXt was trained and internally validated on the ChestX-ray8 dataset, with a held-out validation set consisting of 420 images, sampled to contain at least 50 cases of each of the original pathology labels. On this validation set, the majority vote of a panel of 3 board-certified cardiothoracic specialist radiologists served as reference standard. We compared CheXNeXt's discriminative performance on the validation set to the performance of 9 radiologists using the area under the receiver operating characteristic curve (AUC). The radiologists included 6 board-certified radiologists (average experience 12 years, range 4-28 years) and 3 senior radiology residents, from 3 academic institutions. We found that CheXNeXt achieved radiologist-level performance on 11 pathologies and did not achieve radiologist-level performance on 3 pathologies. The radiologists achieved statistically significantly higher AUC performance on cardiomegaly, emphysema, and hiatal hernia, with AUCs of 0.888 (95% confidence interval [CI] 0.863-0.910), 0.911 (95% CI 0.866-0.947), and 0.985 (95% CI 0.974-0.991), respectively, whereas CheXNeXt's AUCs were 0.831 (95% CI 0.790-0.870), 0.704 (95% CI 0.567-0.833), and 0.851 (95% CI 0.785-0.909), respectively. CheXNeXt performed better than radiologists in detecting atelectasis, with an AUC of 0.862 (95% CI 0.825-0.895), statistically significantly higher than radiologists' AUC of 0.808 (95% CI 0.777-0.838); there were no statistically significant differences in AUCs for the other 10 pathologies. The average time to interpret the 420 images in the validation set was substantially longer for the radiologists (240 minutes) than for CheXNeXt (1.5 minutes). The main limitations of our study are that neither CheXNeXt nor the radiologists were permitted to use patient history or review prior examinations and that evaluation was limited to a dataset from a single institution. CONCLUSIONS: In this study, we developed and validated a deep learning algorithm that classified clinically important abnormalities in chest radiographs at a performance level comparable to practicing radiologists. Once tested prospectively in clinical settings, the algorithm could have the potential to expand patient access to chest radiograph diagnostics.


Subject(s)
Clinical Competence , Deep Learning , Diagnosis, Computer-Assisted/methods , Pneumonia/diagnostic imaging , Radiographic Image Interpretation, Computer-Assisted/methods , Radiography, Thoracic/methods , Radiologists , Humans , Predictive Value of Tests , Reproducibility of Results , Retrospective Studies
3.
Science ; 351(6268): aac9698, 2016 Jan 01.
Article in English | MEDLINE | ID: mdl-26722001

ABSTRACT

Motivation for reward drives adaptive behaviors, whereas impairment of reward perception and experience (anhedonia) can contribute to psychiatric diseases, including depression and schizophrenia. We sought to test the hypothesis that the medial prefrontal cortex (mPFC) controls interactions among specific subcortical regions that govern hedonic responses. By using optogenetic functional magnetic resonance imaging to locally manipulate but globally visualize neural activity in rats, we found that dopamine neuron stimulation drives striatal activity, whereas locally increased mPFC excitability reduces this striatal response and inhibits the behavioral drive for dopaminergic stimulation. This chronic mPFC overactivity also stably suppresses natural reward-motivated behaviors and induces specific new brainwide functional interactions, which predict the degree of anhedonia in individuals. These findings describe a mechanism by which mPFC modulates expression of reward-seeking behavior, by regulating the dynamical interactions between specific distant subcortical regions.


Subject(s)
Anhedonia/physiology , Corpus Striatum/physiology , Dopaminergic Neurons/physiology , Motivation , Prefrontal Cortex/physiology , Reward , Animals , Brain Mapping , Corpus Striatum/cytology , Corpus Striatum/drug effects , Depressive Disorder/physiopathology , Dopamine/pharmacology , Dopaminergic Neurons/drug effects , Female , Magnetic Resonance Imaging , Male , Mesencephalon/cytology , Mesencephalon/drug effects , Mesencephalon/physiology , Nerve Net/physiology , Oxygen/blood , Prefrontal Cortex/cytology , Prefrontal Cortex/drug effects , Rats , Rats, Inbred LEC , Rats, Sprague-Dawley , Schizophrenia/physiopathology
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