102 research outputs found
Origin of Hilbert space quantum scars in unconstrained models
Quantum many-body scar is a recently discovered phenomenon weakly violating
eigenstate thermalization hypothesis, and it has been extensively studied
across various models. However, experimental realizations are mainly based on
constrained models such as the model. Inspired by recent experimental
observations on the superconducting platform in Refs.~[Nat. Phys. 19, 120
(2022)] and [arXiv:2211.05803], we study a distinct class of quantum many-body
scars based on a half-filling hard-core Bose-Hubbard model, which is generic to
describe in many experimental platforms. It is the so-called Hilbert space
quantum scar as it originates from a subspace with a hypercube geometry weakly
connecting to other thermalization regions in Hilbert space. Within the
hypercube, a pair of collective Fock states do not directly connect to the
thermalization region, resulting in slow thermalization dynamics with
remarkable fidelity revivals with distinct differences from dynamics of other
initial states. This mechanism is generic in various real-space lattice
configurations, including one-dimensional Su-Schrieffer-Heeger chain, comb
lattice, and even random dimer clusters consisting of dimers. In addition, we
develop a toy model based on Hilbert hypercube decay approximation, to explain
the spectrum overlap between the collective states and all eigenstates.
Furthermore, we explore the Hilbert space quantum scar in two- and
three-dimensional Su-Schrieffer-Heeger many-body systems, consisting of
tetramers or octamers, respectively. This study makes quantum many-body scar
state more realistic in applications such as quantum sensing and quantum
metrology
GPS-MBA: Computational Analysis of MHC Class II Epitopes in Type 1 Diabetes
As a severe chronic metabolic disease and autoimmune disorder, type 1 diabetes (T1D) affects millions of people world-wide. Recent advances in antigen-based immunotherapy have provided a great opportunity for further treating T1D with a high degree of selectivity. It is reported that MHC class II I-Ag7 in the non-obese diabetic (NOD) mouse and human HLA-DQ8 are strongly linked to susceptibility to T1D. Thus, the identification of new I-Ag7 and HLA-DQ8 epitopes would be of great help to further experimental and biomedical manipulation efforts. In this study, a novel GPS-MBA (MHC Binding Analyzer) software package was developed for the prediction of I-Ag7 and HLA-DQ8 epitopes. Using experimentally identified epitopes as the training data sets, a previously developed GPS (Group-based Prediction System) algorithm was adopted and improved. By extensive evaluation and comparison, the GPS-MBA performance was found to be much better than other tools of this type. With this powerful tool, we predicted a number of potentially new I-Ag7 and HLA-DQ8 epitopes. Furthermore, we designed a T1D epitope database (TEDB) for all of the experimentally identified and predicted T1D-associated epitopes. Taken together, this computational prediction result and analysis provides a starting point for further experimental considerations, and GPS-MBA is demonstrated to be a useful tool for generating starting information for experimentalists. The GPS-MBA is freely accessible for academic researchers at: http://mba.biocuckoo.org
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