ePoster

MIN–MAX NORMALISATION ENHANCES MORPHOMETRIC SIMILARITY NETWORK SENSITIVITY IN YOUNG FEMALES WITH SELF-HARM BEHAVIOUR

Shuning Hanand 5 co-authors

Data and Signal Processing Research Group

FENS Forum 2026 (2026)
Barcelona, Spain
Board PS03-08AM-349

Presentation

Date TBA

Board: PS03-08AM-349

Poster preview

MIN–MAX NORMALISATION ENHANCES MORPHOMETRIC SIMILARITY NETWORK SENSITIVITY IN YOUNG FEMALES WITH SELF-HARM BEHAVIOUR poster preview

Event Information

Poster Board

PS03-08AM-349

Abstract

Self-harm is a major global health issue, and understanding its neural mechanisms is key for effective interventions. Morphometric similarity networks (MSNs) quantify individual-level similarity of multimodal structural MRI features, typically using Pearson correlations of sulcal phenotype vectors after z-score normalisation. This study proposes an improved MSN construction method that uses Min–Max scaling to map each morphometric feature to a common range while preserving its original distribution, as an alternative to z-score normalisation. We compared MSNs from two normalisation methods in a sample of 48 young females (24 healthy controls and 24 with self-harm behaviour). Our results show that normalisation choice significantly affects MSN topology. Min–Max normalisation enhances between-group differences at both group and individual levels. In the group-average MSNs, the self-harm group exhibits stronger right intra-hemispheric connectivity but weaker left intra-hemispheric and inter-hemispheric connectivity. At the individual level, these patterns are replicated and further characterised by significantly reduced hemispheric strength ratios (left-to-right and intra-to-inter) and slightly lower overall network integration, including mean connection strength and node versatility. This study highlights how normalisation methods impact MSN construction and interpretation. Min–Max normalisation offers a more robust and sensitive framework for analysing brain network organisation, particularly in distinguishing self-harm, which could serve as a potential biomarker. Future studies should validate these findings in larger, diverse samples and explore clinical applications.

Composite figure comparing two ways of constructing morphometric similarity networks (MSNs) from structural MRI: the conventional approach with z-score normalisation (left) and an improved approach using Min–Max scaling (right). The top panels show the processing workflow (feature extraction, normalisation, and Pearson-correlation–based network construction). Middle panels display group-average MSN heatmaps for healthy controls (HC) and the self-harm group (SH), alongside Mann–Whitney U test p-values. Lower panels include curves of mean signed Euclidean distance (mSED) across connection densities and multiple boxplots of network measures (e.g., intra-/inter-hemispheric strengths and ratios, clustering/participation coefficients, characteristic path length), with statistically significant differences highlighted in red boxes, more evident in the Min–Max results.

Recommended posters

NETWORK-BASED INTEGRATION OF IMAGING MODALITIES IN DYNAMIC BRAIN NETWORKS TO ASSESS NEUROMODULATION-INDUCED STRUCTURAL CHANGES

Rafael Pitsillos, Stela Makri, Agisilaos Matalliotakis, Dimitris Dimitriou, Sotiroula Afxenti, George M. Spyrou, Margarita Zachariou

MULTIMODAL STRUCTURAL BRAIN ALTERATIONS IN SCHIZOPHRENIA: GRAY MATTER LOSS AND DISRUPTED STRUCTURAL COVARIANCE NETWORKS

Giada Damiani, Maria Pujol-Torrens, David Vállez, Michalis Kassinopoulos, Jordi Huguet, Ana Harris, Ares Ramos, Pilar Alvarez, Anna Mané, Amira Trabsa, Laura Martinez-Sadurni, Maria José Algora, Claudia Sánchez, Mayte Gomariz, Vanessa Sanchez-Gistau, Pol Ramon-Cañellas, Rosa Mariné, Gerard Muntané, Gabriel Santpere, Gemma Salvadó, Raffaele Cacciaglia

MAPPING SEX AND AGE EFFECTS USING BRAIN CHARTS IN SCHIZOPHRENIA SPECTRUM DISORDER

Alessia Pasquini, Chloé Gomez, Patricia Segura, Natalia García-San-Martín, Claudio Alemán-Morillo, Pablo Salguero-Quiros, Lena Dorfschmidt, Richard A. I. Bethlehem, Benedicto Crespo-Facorro, Rafael Romero-García

ASSOCIATIONS BETWEEN CHILDHOOD ADVERSITY AND RESTING-STATE FUNCTIONAL CONNECTIVITY IN THE UK BIOBANK

Delia Gheorghe, Morgane Künzi, Ammar Shahabuddin, Sarah Bauermeister

NORMATIVE NEUROMELANIN-SENSITIVE MRI TRAJECTORIES ACROSS THE LIFESPAN: METHODOLOGICAL INFLUENCES ON BRAINSTEM SIGNAL QUANTIFICATION

Eduardo Rosales Jubal, Magali Perquin, Claire Pauly, Rejko Krüger, Michel Vaillant

LOCALIZED STRUCTURAL HYPER-CONNECTIVITY IN ADULT AUTISM: EVIDENCE FROM MORPHOMETRIC INVERSE DIVERGENCE

Bernis Sütçübaşı, Batuhan Memiş, Ebru Durdu, Stefani Helin Yavaş, Yağmur Tekin, Şeyma Bayram, Melis Zeybey

Cookies

We use essential cookies to run the site. Analytics cookies are optional and help us improve World Wide. Learn more.