Vincenzo Laveglia

About Vincenzo Laveglia

Vincenzo Laveglia, With an exceptional h-index of 3 and a recent h-index of 3 (since 2020), a distinguished researcher at Università degli Studi di Firenze, specializes in the field of Machine Learning.

His recent articles reflect a diverse array of research interests and contributions to the field:

Hunting down zinc (II)-binding sites in proteins with distance matrices

Downward-Growing Neural Networks

Metal-induced structural variability of mononuclear metal-binding sites from a database perspective

Learning to Identify Physiological and Adventitious Metal-Binding Sites in the Three-Dimensional Structures of Proteins by Following the Hints of a Deep Neural Network

Automated determination of nuclear magnetic resonance chemical shift perturbations in ligand screening experiments: the PICASSO web server

Vincenzo Laveglia Information

University

Position

PhD candidate

Citations(all)

26

Citations(since 2020)

22

Cited By

13

hIndex(all)

3

hIndex(since 2020)

3

i10Index(all)

1

i10Index(since 2020)

0

Email

University Profile Page

Google Scholar

Vincenzo Laveglia Skills & Research Interests

Machine Learning

Top articles of Vincenzo Laveglia

Hunting down zinc (II)-binding sites in proteins with distance matrices

Bioinformatics

2023/11/1

Downward-Growing Neural Networks

Entropy

2023/4/28

Vincenzo Laveglia
Vincenzo Laveglia

H-Index: 2

Metal-induced structural variability of mononuclear metal-binding sites from a database perspective

Journal of Inorganic Biochemistry

2023/1/1

Learning to Identify Physiological and Adventitious Metal-Binding Sites in the Three-Dimensional Structures of Proteins by Following the Hints of a Deep Neural Network

2022/6/9

Automated determination of nuclear magnetic resonance chemical shift perturbations in ligand screening experiments: the PICASSO web server

Journal of Chemical Information and Modeling

2021/11/29

See List of Professors in Vincenzo Laveglia University(Università degli Studi di Firenze)

Co-Authors

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