Exploring the Mysteries of
Lifelong Brain Resilience

Aging is often assumed to follow a common, universal trajectory.
However, a closer look at real-world data reveals a very different picture. The course of aging is far from uniform.

Some individuals maintain remarkable cognitive function despite substantial pathological burden.
Others, under seemingly similar biological conditions, experience rapid cognitive decline.


Our laboratory begins with a fundamental question:


   Why, under comparable aging conditions, do some individuals exhibit high levels of neural robustness 
   and resilience, while others show pronounced vulnerability?

   What structural and dynamical properties of brain networks give rise to these divergent trajectories?

   How do genetic, cellular, molecular, and environmental factors interact with brain network
   organization to shape these differences?


We approach these questions through computational modeling and multimodal&multiscale brain network analysis.


Structural Determinants of Brain Resilience

The white matter connectome is the physical backbone that defines a brain’s capacity to withstand aging and pathology. We identify the structural architectures—such as topological redundancy and hierarchical organization—that maintain network integrity despite localized neurodegeneration. By analyzing these physical constraints, we uncover how specific wiring patterns allow for the preservation of global communication pathways, defining the structural blueprint of a resilient brain.


Dynamical Determinants of Cognitive Resilience

Resilience is manifested in the brain's ability to actively reconfigure its functional states to meet cognitive demands. We investigate latent brain state dynamics to characterize how large-scale networks transition during task performance and rest. This research identifies the dynamical signatures of neural efficiency—understanding how a resilient brain maintains a flexible repertoire of functional states and transition rules to compensate for underlying biological decline.


Multiscale Drivers of Individual Resilience

To explain why aging trajectories diverge, we bridge the gap between microscopic biological drivers and macroscopic system outcomes. We develop AI-driven frameworks that integrate multimodal neuroimaging, genetics, and environmental factors to model the multiscale origins of resilience. This pillar translates high-dimensional biological data into predictive models, uncovering the causal interactions that shape a resilient brain across the lifespan.

Exploring the Mysteries of
Lifelong Brain Resilience

Aging is often assumed to follow a common, universal trajectory.
However, a closer look at real-world data reveals a very different picture. The course of aging is far from uniform.

Some individuals maintain remarkable cognitive function despite substantial pathological burden.
Others, under seemingly similar biological conditions, experience rapid cognitive decline.


Our laboratory begins with a fundamental question:


   Why, under comparable aging conditions, do some individuals exhibit high levels of neural robustness 
   and resilience, while others show pronounced vulnerability?

   What structural and dynamical properties of brain networks give rise to these divergent trajectories?

   How do genetic, cellular, molecular, and environmental factors interact with brain network
   organization to shape these differences?


We approach these questions through computational modeling and multimodal&multiscale brain network analysis.


Structural Determinants of Brain Resilience

The white matter connectome is the physical backbone that defines a brain’s capacity to withstand aging and pathology. We identify the structural architectures—such as topological redundancy and hierarchical organization—that maintain network integrity despite localized neurodegeneration. By analyzing these physical constraints, we uncover how specific wiring patterns allow for the preservation of global communication pathways, defining the structural blueprint of a resilient brain.


Dynamical Determinants of Cognitive Resilience

Resilience is manifested in the brain's ability to actively reconfigure its functional states to meet cognitive demands. We investigate latent brain state dynamics to characterize how large-scale networks transition during task performance and rest. This research identifies the dynamical signatures of neural efficiency—understanding how a resilient brain maintains a flexible repertoire of functional states and transition rules to compensate for underlying biological decline.


Multiscale Drivers of Individual Resilience

To explain why aging trajectories diverge, we bridge the gap between microscopic biological drivers and macroscopic system outcomes. We develop AI-driven frameworks that integrate multimodal neuroimaging, genetics, and environmental factors to model the multiscale origins of resilience. This pillar translates high-dimensional biological data into predictive models, uncovering the causal interactions that shape a resilient brain across the lifespan.

Multiscale Drivers of Individual Resilience

To explain why aging trajectories diverge, we bridge the gap between microscopic biological drivers and macroscopic system outcomes. We develop AI-driven frameworks that integrate multimodal neuroimaging, genetics, and environmental factors to model the multiscale origins of resilience. This pillar translates high-dimensional biological data into predictive models, uncovering the causal interactions that shape a resilient brain across the lifespan.

우리는 흔히 노화가 모두에게 동일한 방향으로 진행된다고 생각합니다.
그러나 실제 데이터를 면밀히 들여다보면, 노화의 궤적은 결코 단일하지 않습니다.

어떤 개인은 병리적 변화 속에서도 인지 기능을 유지하는 반면,
또 다른 개인은 유사한 조건에서도 급격한 인지 저하를 경험합니다.


우리 연구실의 연구는 다음의 질문에서 출발합니다.


    왜 동일한 노화 조건 속에서도 어떤 개인은 높은 강건성과 회복력을 보이는 반면,
    또 다른 개인은 높은 취약성을 보이는가?

    뇌 네트워크의 어떠한 구조적·동역학적 특성과 재구성 패턴이 이러한 차이를 야기하는가?
    그리고 이러한 차이를 형성하는 유전적 요인, 세포·분자적 요인, 환경적 요인은 뇌 네트워크와 어떠한 방식으로 상호작용하는가?


우리 연구실은 이러한 질문을 계산적 모델링과 다층 네트워크 분석을 통해 체계적으로 규명하고자 합니다.


궁극적으로 우리 연구실은 이러한 다층적 상호작용을 통합적으로 해명함으로써,
인간의 전 생애 주기에 걸쳐 형성되고 변화하는 뇌의 강건성과 회복력의 기전을 밝히고자 합니다.