Neuroscience
Young researchers award
Oct 09-10, 2025 Tokyo, Japan

World Congress on Neuroscience

Early Bird Registration End Date: Feb 05, 2025
Abstract Submission Opens: Dec 23, 2024

Young Scientist Award

Young Researchers Award

Sciconx Conferences is pleased to announce the Young Researchers Award, recognizing the outstanding achievements of young professionals and researchers in Neuroscience. This award will be presented at the “World Congress on Neuroscience”, slated for October 09-10, 2025 in Tokyo, Japan. It offers a platform for talented young researchers, investigators, postgraduate/master's students, and scholars to present their current research and innovations. Submit your abstract, register for the Neuroscience conference, and nominate yourself for the YRF awards.

Eligibility:

Postgraduates/Masters Students, Junior Scientists, Young Faculty Members, Ph.D. Scholars, and Postdoc Researchers

Privileges:

The Young Scientist Feature promotes young researchers by allowing them to present their achievements and future perspectives.

1. Acknowledgment as YRF Awardee

2. Recognition through certificates and mementos

3. Recognition via website promotion and award page

4. Networking opportunities with partners worldwide

5. Free publication of the research paper

Criteria:

1. All accepted abstracts automatically qualify for the Award.

2. Presentations will be evaluated at the conference venue.

3. Award winners will be selected by the judges of the award category.

4. Awards will be assessed based on design and format, intelligence, argumentation and approach, familiarity with past work, engaging quality, message and primary concerns, balance of content visuals, and overall impression.

Guidelines:

1. Submissions must be in English.

2. Topics must align with the conference's scientific sessions.

3. Each participant can submit a maximum of 2 abstracts.

4. Abstracts must be submitted online following the given template.

5. Abstracts must be written in Times New Roman, font size 12, and include title, name, affiliation, country, speakers' biography, recent photograph, image, and reference.

Conditions of Acceptance:

Awardees must submit the presentation for which the award is given for publication on the website, along with the author's permission. Failure to do so within the designated timeframe will result in forfeiture of the award.

Award Announcements:

Recipients will be officially announced after the conference concludes.

Latest News

How brain connectivity and machine learning enhance understanding of human cognition

2024-12-16 - 2024-12

A recent study explores the relationship between brain connectivity and intelligence, highlighting the value of interpretability in predictive modeling for deeper insights into human cognition.

Machine learning in neuroscience
Neuroscientific research on human cognition has evolved from focusing on single-variable explanatory studies to employing machine learning-based predictive modeling. This shift enables the analysis of relationships between behavior and multiple neurobiological variables to forecast behavior across diverse samples.

Intelligence, a key predictor of life outcomes such as health and academic achievement, has been extensively studied, with theories dividing it into fluid and crystallized components. Recent machine learning approaches have enhanced intelligence prediction using brain connectivity data. However, limited conceptual insights, reliance on specific intelligence measures, and methodological constraints highlight the need for further research to systematically explore predictive brain features.
The present study adhered to a rigorous methodology, with all analyses, sample sizes, and variables preregistered on the Open Science Framework. The primary analyses followed preregistered protocols, with additional post hoc analyses conducted to further explore brain connections most relevant for intelligence prediction.

Study participants were drawn from the Human Connectome Project (HCP) Young Adult Sample S1200, consisting of 1,200 individuals between 22 and 37 years of age. Informed consent was obtained in accordance with the Declaration of Helsinki and all procedures were approved by the Washington University Institutional Review Board.

After exclusions for missing data, cognitive impairment based on Mini-Mental State Examination (MMSE) scores of 26 and less, or excessive head motion, the final sample included 806 participants, 418 of whom were female and 733 right-handed. Measures of intelligence including general intelligence (gg), crystallized intelligence (gCgC), and fluid intelligence (gFgF) were estimated using bi-factor and exploratory factor analyses from cognitive test scores.
Functional magnetic resonance imaging (fMRI) data were collected during resting state and seven cognitive tasks to construct subject-specific functional connectivity (FC) matrices. Minimally pre-processed fMRI data underwent additional preprocessing steps, including nuisance regression, global signal correction, and removal of task-evoked activation, to improve connectivity estimates. Predictive modeling utilized feedforward neural networks, which incorporated five-fold cross-validation, hyperparameter optimization, and an out-of-sample deconfounding approach to control for covariates such as age, sex, and head motion.
Model interpretability was enhanced using layer-wise relevance propagation (LRP) to identify functional brain connections most critical for predictions. External replication was performed using two independent d


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