Building on our understanding of the fundamentals of neuroplasticity covered in the previous chapter, we now transition to how the brain's capacity for change can be strategically harnessed through consistent, incremental behavioral interventions [
30,
33,
34]. The brain undergoes functional and structural remodelling in response to various stimuli and experiences [
29,
30]. While neuroplasticity might be seens as inherent, specific interventions can systematically engage these processes to facilitate meaningful behavioral change and counteract maladaptive patterns [
23,
24,
25,
34]. Evidence from addiction research indicates that targeted behavioral therapies can attenuate maladaptive neuroplasticity, potentially restoring more normative neural function [
23,
24,
25]. Similarly, regular physical activity has been shown to stimulate hippocampal neurogenesis and enhance synaptic efficacy, effectively countering adverse effects associated with sedentary lifestyles or aging [
26,
27,
28,
35]. This chapter reviews a range of evidence-based interventions, including targeted behavioral therapies for addiction, mindfulness practices, cognitive training protocols, incremental habit reformation strategies, and specific physical activity regimens, which systematically engage neuroplastic processes [
23,
24,
25,
26,
27,
28,
29,
30,
31,
32,
33,
34,
35]. Understanding how these interventions operate on neural circuits and functions provides a practical framework for leveraging neuroplasticity for improved health, well-being, and cognitive function [
25,
27,
29,
35].
3.1. Targeting Maladaptive Neuroplasticity in Addiction
Addiction represents a compelling example of maladaptive neuroplasticity, where drug-induced changes impair brain function, particularly the capacity for self-control over drug-taking behaviors [
23,
25]. With continued use, the brain becomes increasingly sensitive to stress and negative emotional states [
25]. The neurobiology of addiction involves a combination of excessive incentive salience, a loss of normal reward function, and a heightened stress response [
23]. Together, these changes contribute to negative reinforcement and compulsive drug-seeking behavior [
23]. A key feature of this condition is dysfunction in the prefrontal cortex (PFC), which underlies a syndrome known as impaired response inhibition and salience attribution (iRISA) [
24]. This syndrome is marked by exaggerated salience attributed to drugs and drug-related cues, diminished sensitivity to non-drug rewards, and a weakened capacity to suppress maladaptive behaviors [
24]. Disruptions in PFC-related processes in addiction further impair functions such as self-control, behavioral monitoring, emotion regulation, motivation, awareness, attention, cognitive flexibility, learning, memory, and decision-making [
24].
Neurocircuitry analyses suggest a model involving opposing systems: a 'Go' system driving craving and habits via the basal ganglia, and a 'Stop' system controlling choices and suppressing negative emotional responses [
23]. Under this framework, the Stop system should inhibit the Go craving system and the stress system [
23]. This dynamic interplay underlies the core cycle of addiction, where dysregulation in these systems fosters compulsive behavior, emotional distress, and impaired executive control, hallmarks of substance use disorders [
23].
The transition from controlled to compulsive drug taking has been associated with a shift from ventral striatal regions (implicated in reward) to the dorsal striatum (associated with habit formation) [
25,
41]. This shift may represent a transition from prefrontal cortical control over goal-directed actions to more habitual, stimulus-response modes of responding governed by striatal systems [
41]. Drug-associated conditioned reinforcers can support the learning of new drug-seeking responses, an effect resistant to extinction [
41]. Compulsive-like habits may also emerge from the negative affective state associated with withdrawal [
23]. Such compulsive behavior can be characterized as a maladaptive stimulus-response habit where the goal (drug effect) may be devalued, yet behavior persists, governed by discriminative stimuli [
41]. This aligns with the hypothesis that drug addiction is an aberrant form of learning, potentially mediated by maladaptive recruitment of memory systems [
45]. Consequently, drug-seeking behaviors may persist even when the drug's subjective rewarding effects wane, with relapse triggered by cues that reactivate these ingrained habits [
45].
Harnessing neuroplasticity to counter addiction involves targeting the disrupted brain circuits and cognitive processes underlying compulsive drug use [
23,
24,
25]. Cognitive-behavioral interventions play a key role in this effort by helping to restore prefrontal cortex (PFC) function, particularly in addressing impairments linked to dorsal anterior cingulate cortex (dACC) hypoactivity [
24]. For instance, informative cueing has been shown to enhance inhibitory control in methamphetamine-addicted individuals, with this improvement correlating with increased activation of the anterior cingulate cortex (ACC) during a go/no-go task [
24].
More broadly, cognitive strategies combined with long-term abstinence can reduce cue-induced responses in the PFC [
24]. Instructing participants to actively inhibit craving has been associated with greater activation in brain regions responsible for inhibitory control, alongside reduced activity in areas linked to craving [
24]. Similarly, treatment-seeking smokers who were directed to resist craving exhibited increased engagement of the dorsolateral PFC (DLPFC) and ACC [
24]. Encouraging individuals to focus on the long-term consequences of drug use also activated PFC control regions while dampening activity in craving-related circuits [
24].
Behavioral extinction interventions aim to decrease the motivational value of conditioned responses to drug cues, potentially by targeting the PFC, amygdala, and hippocampus [
25]. These interventions can be coupled with medications such as d-cycloserine to enhance their effectiveness [
25]. Pharmacological strategies also aim to modulate neuroplastic changes associated with addiction; for instance, kappa opioid receptor (KOR) antagonists show potential for preventing relapse and blocking compulsive drug seeking [
25]. Similarly, corticotropin-releasing factor (CRF) receptor antagonists can block the stress-like effects of withdrawal and excessive drug taking in animal models [
23].
Other promising targets include metabotropic glutamate 1 receptors, whose blockade can prevent cue-induced reinstatement of drug seeking, and the mTORC1 pathway, which is implicated in the reconsolidation of drug-related memories [
23]. Enhancing tonic dopaminergic D2 receptor signaling is another strategy that might support better self-regulation and control [
25]. Medications such as oral stimulants, methylphenidate (MPH) or modafinil, may enhance PFC function by increasing dopamine signaling [
25]. In support of this, oral MPH has been shown to attenuate reduced metabolism in limbic regions, and dorsolateral PFC (DLPFC), following cocaine cue exposure [
24]. It also improved performance on a drug-relevant Stroop task (interference control), with associated normalization of anterior cingulate cortex (ACC) activation [
24]. Additionally, intravenous MPH improved inhibitory control in cocaine abusers, which correlated with changes in middle frontal cortex and ventromedial PFC activity toward normalization [
24]. These dopamine-enhancing effects may facilitate behavioral changes such as improved self-control, particularly when combined with cognitive interventions [
24].
Furthermore, interventions can also address the reduced sensitivity to non-drug rewards often observed in addiction [
24]. Cognitive-behavioral strategies or pharmacological treatments may help alleviate dysphoria and boost responsiveness to natural, non-drug rewards during withdrawal [
25]. Increasing individuals’ awareness of the severity of their substance use is also critical; in alcoholics, greater awareness has been linked to higher rates of abstinence, highlighting the potential for personalized interventions targeting self-awareness deficits [
24].
Beyond behavioral and pharmacological approaches, brain stimulation techniques such as transcranial magnetic stimulation (TMS) and direct electrical stimulation are under investigation for their therapeutic potential [
23,
25]. In animal models, optogenetic stimulation of the prefrontal cortex (PFC) has been shown to prevent cocaine relapse, while optogenetic inhibition affected the incubation of craving and drug-seeking behavior, depending on the specific neuronal populations targeted [
25].
Ultimately, normalizing PFC function through empirically grounded pharmacological and cognitive-behavioral interventions, ideally in conjunction with meaningful, non-drug reinforcers, should be a central goal of treatment [
24]. Even when immediate abstinence is not achieved, interventions that counteract dysphoria or bolster executive function may significantly improve long-term recovery outcomes [
25]. Looking ahead, future advances may allow for highly tailored interventions based on individual specific patterns of circuit dysfunction [
25].
3.2. Physical Activity for Cognitive Function and Brain Health
Regular physical activity represents a powerful strategy for harnessing neuroplasticity to enhance brain health and cognitive function across the lifespan [
26,
27,
28,
35]. Exercise influences multiple aspects of brain function and contributes broadly to overall brain health [
27], improving learning and memory in both humans and animals [
26], [
28]. In aging populations, an active lifestyle can delay or prevent cognitive decline associated with aging or neurodegenerative disease [
26]. These benefits are particularly evident in older adults, where sustained participation in physical activity has been shown to enhance learning, memory, and executive functioning, helping to counteract age-related mental decline and protect against brain atrophy [
27].
The cognitive benefits of exercise are reflected in neurophysiological measures such as EEG and event-related potentials (ERPs); aerobically fit individuals exhibit decreased latency and increased amplitude, signaling improved neuronal conduction and cortical activation [
26]. Neuroimaging studies further support these findings, showing that active elderly individuals have greater gray matter volume in prefrontal and temporal regions compared to sedentary peers [
26]. Additionally, aerobic training has been linked to increases in both gray and white matter volume in the prefrontal cortex, as well as enhanced functioning of executive control networks in older adults [
28].
The hippocampus, a brain region critical for learning, memory, and spatial navigation, is particularly responsive to the effects of physical exercise [
27]. This structure typically shrinks in late adulthood, contributing to memory impairments and an increased risk of dementia [
28]. However, individuals with higher levels of aerobic fitness tend to have larger hippocampal and medial temporal lobe volumes [
28]. Notably, aerobic exercise training can even reverse hippocampal volume loss in older adults [
28].
In a randomized controlled trial involving 120 older adults, one year of moderate-intensity aerobic exercise increased the size of the anterior hippocampus by approximately 2%, effectively reversing age-related loss equivalent to 1-2 years of decline [
28]. In contrast, participants in the control group who engaged in stretching exercises experienced continued hippocampal shrinkage over the same period [
28]. Interestingly, individuals with higher baseline fitness showed a slower rate of decline in the control group, suggesting that fitness itself offers a degree of neuroprotection [
28].
The volume increase from exercise was selective, primarily affecting the anterior hippocampus, including the dentate gyrus, subiculum, and CA1 subfields, rather than the posterior hippocampus, caudate nucleus, or thalamus [
28]. This is significant, as cells in the anterior hippocampus, which are heavily involved in spatial memory acquisition, also exhibit greater age-related atrophy [
28]. Therefore, aerobic exercise may exert its most pronounced effects in regions that are most vulnerable to age-related decline [
28].
The exercise-induced increase in hippocampal volume has been directly linked to improvements in memory function, particularly spatial memory [
28]. In a one-year intervention, gains in hippocampal volume were positively correlated with enhancements in spatial memory performance [
28]. Individuals with larger hippocampal volumes, both before and after the exercise program, consistently showed better spatial memory [
28]. Moreover, those who experienced greater improvements in aerobic fitness also showed larger increases in hippocampal volume, reinforcing the connection between physical fitness and brain structure [
28].
Several neurobiological mechanisms contribute to the cognitive and structural benefits of exercise [
26]. Physical activity enhances synaptic plasticity by influencing synaptic structure, strengthening synaptic transmission, and supporting broader systems such as neurogenesis, metabolism, and vascular function [
27]. A central mechanism behind these effects is the upregulation of both central and peripheral growth factors, most notably Brain-Derived Neurotrophic Factor (BDNF) [
27]. BDNF plays a critical role in synaptic plasticity, neuronal growth, cell survival, and neurogenesis, and is consistently upregulated by physical activity [
26,
27,
28,
35]. Exercise increases both BDNF mRNA and protein levels in the hippocampus, with effects that are both rapid and sustained [
26,
35]. Notably, higher hippocampal volume is associated with greater serum levels of BDNF, and individuals showing greater increases in serum BDNF also exhibit larger gains in anterior hippocampal volume following exercise interventions [
28].
The effects of BDNF are mediated in part through its receptor, TrkB. Together, BDNF and TrkB contribute to dendritic expansion and are crucial for memory formation [
28]. Blocking TrkB signaling in the hippocampus has been shown to reduce the positive impact of exercise on spatial learning and memory retention, underscoring the importance of this pathway [
27]. BDNF contributes to dendritic expansion and is critical in memory formation [
28].Exercise thus elevates both BDNF and TrkB levels in the hippocampus, forming a key molecular basis for its cognitive benefits [
35].
Exercise is also the strongest known stimulus for adult hippocampal neurogenesis [
26]. In rodents, voluntary wheel running leads to a dramatic increase in the production and survival of new neurons in the dentate gyrus (DG), an effect that persists throughout life [
26,
35]. This neurogenic response can even reverse declines caused by factors such as pregnancy or radiation treatment [
26]. The newly generated neurons are functionally integrated into existing circuits and possess a lower threshold for excitability, making them especially well-suited for supporting enhanced plasticity [
27]. This exercise-induced boost in highly plastic cells may help explain the strong relationship between physical activity and memory improvement [
26].
In addition to promoting neurogenesis, exercise enhances long-term potentiation (LTP), a synaptic correlate of learning, in the DG [
26,
27,
35]. This enhancement is consistent with elevated BDNF levels and is accompanied by structural changes in DG cytoarchitecture, including increased dendritic length, branching complexity, and spine density [
27,
35]. Exercise also elevates levels of key synaptic proteins and glutamate receptors (e.g., NR2B, GluR5) [
27,
35]. Furthermore, running has been shown to enhance dendritic spine density in the DG, CA1, and entorhinal cortex, while accelerating the maturation of spines in newborn neurons [
26,
35].
In addition to BDNF, other growth factors such as Insulin-like Growth Factor-1 (IGF-1) and Vascular Endothelial Growth Factor (VEGF) play key roles in mediating the effects of exercise on the brain [
27]. Physical activity increases circulating levels of both IGF-1 and VEGF [
26], and these peripheral sources are essential for promoting exercise-induced neurogenesis and angiogenesis [
27]. Experimental studies show that blocking peripheral IGF-1 or VEGF inhibits the neurogenic effects of exercise, highlighting their necessity in this process [
26,
27]. IGF-1 signaling, in particular, has been linked to improved learning and spatial memory [
27]. Notably, IGF-1 and BDNF pathways may converge, suggesting that BDNF could serve as a final common mediator of exercise-induced hippocampal plasticity and cognitive enhancement [
27]. Exercise also stimulates widespread angiogenesis, growth of new blood vessels, in the hippocampus, cortex, and cerebellum, which enhances the brain’s supply of nutrients and energy [
26,
27,
35]. This vascular remodeling is closely associated with increased brain levels of VEGF, reinforcing its role in the structural and functional brain adaptations to physical activity [
27,
35].
Furthermore, exercise also mitigates several peripheral risk factors associated with cognitive decline, including hypertension, diabetes, cardiovascular disease, and systemic inflammation, all of which can weaken growth factor signaling in the brain [
27]. By improving overall immune health, physical activity reduces levels of pro-inflammatory cytokines, contributing to a healthier neuroimmune environment [
27]. This reduction in both peripheral and central inflammation may represent a shared protective mechanism against metabolic disorders and cognitive decline [
27].
Additionally, exercise activates the monoamine system, enhancing serotonin biosynthesis and supporting recovery from depression [
26]. The observed increase in neurogenesis may underlie the antidepressant effects of both physical activity and pharmacological treatments [
26]. Beyond mood regulation, exercise exerts neuroprotective effects, offering resilience against brain injuries such as stroke and potentially delaying the onset and progression of neurodegenerative conditions, including Alzheimer’s, Parkinson’s, and Huntington’s diseases [
26,
27]. For instance, in animal models of Alzheimer’s disease, exercise has been shown to reduce amyloid-β plaque accumulation [
27].
Most importantly, aerobic exercise is a measurable and effective neuroprotective intervention that enhances cognitive function and brain volume, even when initiated later in life [
26,
28].
3.3. Mindfulness Meditation for Self-Regulation and Well-Being
Mindfulness meditation is a form of mental training increasingly utilized for stress reduction, health promotion, and cognitive enhancement [
29]. It aims to improve core psychological capacities like attentional and emotional self-regulation [
29]. Typically described as non-judgmental attention to experiences in the present moment, mindfulness meditation involves interacting components including enhanced attention control, improved emotion regulation, and altered self-awareness (characterized by reduced self-referential processing and heightened body awareness) [
29]. Therapeutic programs incorporating mindfulness, such as Mindfulness-Based Stress Reduction (MBSR), have reported positive effects on psychological well-being and symptom amelioration across various disorders [
30].
Recent neuroimaging research, particularly longitudinal studies with control groups, has begun to uncover the neural mechanisms mediating these benefits, revealing changes in behavior, brain structure, and function [
29]. Over 20 studies have investigated alterations in brain morphometry related to mindfulness meditation, examining metrics like cortical thickness, gray matter volume/density, and white matter integrity [
29]. Reported effects span multiple brain regions, suggesting involvement of large-scale networks [
29]. A meta-analysis identified eight regions consistently altered in meditators: frontopolar cortex (linked to meta-awareness), sensory cortices and insula (linked to body awareness), hippocampus (linked to memory processes), anterior cingulate cortex (ACC), mid-cingulate cortex, and orbitofrontal cortex (linked to self and emotion regulation), and white matter tracts like the superior longitudinal fasciculus and corpus callosum (linked to intra- and inter-hemispheric communication) [
29].
Furthermore, a controlled longitudinal study examining an 8-week MBSR program found specific increases in gray matter concentration compared to a control group [
30]. Notably, structural analyses confirmed increased gray matter in the left hippocampus [
30]. Whole-brain analyses further identified increases in the posterior cingulate cortex (PCC), temporo-parietal junction (TPJ), and cerebellum within the MBSR group [
30]. These brain regions are associated with key functions such as learning and memory, emotion regulation, self-referential processing, and perspective-taking [
30]. Such morphological changes may reflect lasting neural adaptations that support improved mental functioning and overall psychological health [
30]. It is widely believed that increased gray matter volume results from the repeated activation of specific brain regions during mindfulness practice [
30]. Potential underlying cellular mechanisms include dendritic branching, synaptogenesis, myelin formation, and possibly adult neurogenesis; additional effects may involve modulation of autonomic function, immune activity, neuronal preservation, or inhibition of apoptosis [
29].
Functional brain changes are also evident with mindfulness practice [
29]. Enhanced attentional control, a central component of meditation. is reported to improve with continued practice [
29]. The ACCis consistently implicated in mindfulness-related improvements in attention, with corresponding structural markers such as increased cortical thickness and enhanced white matter integrity [
29]. Additionally, mindfulness practice has been linked to reduced age-related decline in gray matter volume in the putamen and to preserved sustained attention performance over time [
29]. Even brief mindfulness training (e.g., four days of 20-minute sessions) has been shown to produce measurable cognitive benefits, similar to those observed with long-term practice [
31]. This short-term training significantly enhanced performance on tasks requiring sustained attention and executive function, including the Symbol Digit Modalities Test, verbal fluency tasks, and working memory challenges like the n-back task [
31]. Participants demonstrated a greater ability to maintain focus and accurately retrieve information under rapid processing demands [
31]. Moreover, brief mindfulness practice also led to increased self-reported mindfulness skills and decreased subjective fatigue [
31].
Improvements in emotion regulation represent another core benefit of mindfulness practice [
29]. Regular meditation is associated with reduced amygdala activation in response to emotional stimuli, indicating decreased emotional reactivity and arousal [
29]. This aligns with the idea that mindfulness meditation functions similarly to exposure therapy, in which individuals learn to observe bodily and emotional responses without engaging in reactive patterns [
29].
Structural changes have been observed in brain regions involved in emotion regulation following mindfulness training [
29]. Functional connectivity studies suggest that mindfulness may enhance the regulatory influence of executive control regions, such as the prefrontal cortex, over limbic areas like the amygdala [
29]. A well-documented outcome of mindfulness techniques is stress reduction, which may underlie these neural changes [
29]. For instance, mindfulness training has been shown to increase gray matter density in the hippocampus, while reductions in perceived stress were correlated with decreased gray matter density in the amygdala, suggesting that stress reduction might help reverse stress-related brain remodeling [
29].
Mindfulness practice also influences self-awareness and self-referential processing [
29]. Brain structures involved in self-referential processing, such as the medial prefrontal cortex (mPFC) and posterior cingulate cortex (PCC), key nodes of the Default Mode Network (DMN), show altered activity and structure as a result of meditation [
29,
30]. Reduced DMN activity during meditation has been interpreted as a sign of diminished self-referential processing [
29]. In meditators, the insula, a region involved in interoception and body awareness, exhibits stronger activation and increased cortical thickness [
29]. Additionally, mindfulness training may lead to an uncoupling of the insula from the mPFC, while enhancing connectivity with dorsolateral prefrontal cortex (DLPFC) regions [
29]. Structural changes in the temporo-parietal junction (TPJ), which plays a role in embodiment and the spatial integration of the self, may be linked to the cultivation of self-awareness and compassion during mindfulness practice [
30]. Increases in PCC structure may reflect its role in integrating self-referential stimuli within an emotional and autobiographical context, functions that are engaged during introspective observation in mindfulness [
30].
Mindfulness training may enhance meta-awareness, the ability to observe and control one's own mental processes [
31]. This could improve the ability to control self-referential thoughts or mind-wandering, thereby improving attentional efficiency [
31]. Mindfulness practice promotes a form of meta-cognitive insight, allowing practitioners to emotionally disengage from distractors and maintain focus on the present task [
31]. This form of top-down cognitive control contributes to better performance [
31].
In summary, across studies, consistent changes associated with mindfulness meditation are observed in the ACC, PFC, PCC, insula, striatum, hippocampus, and amygdala [
29]. These findings suggest mindfulness practices systematically engage neuroplastic mechanisms to enhance self-regulation, cognitive abilities, and psychological well-being [
29].
3.4. Cognitive Training for Targeted Enhancement
Cognitive training, particularly training of working memory (WM, the cognitive system responsible for temporarily holding and manipulating information necessary for complex tasks, such as reasoning, learning, and comprehension, unlike), represents another avenue for harnessing neuroplasticity to improve cognitive functions [
32]. WM capacity is strongly predictive of performance across a wide range of cognitive tasks, including reasoning and academic performance [
33]. While traditionally viewed as a fixed trait, recent research indicates that WM capacity can be improved through adaptive and extended training [
32,
33]. This training is associated with measurable changes in brain activity and structure, suggesting training-induced plasticity [
33].
Two main approaches to WM training exist: strategy training and core training [
32]. Strategy training involves teaching specific, effective techniques for encoding, maintaining, or retrieving information in WM, such as articulatory rehearsal or using elaborative imagery [
32]. Studies confirm that strategy training can increase the amount of information remembered on WM tasks amenable to the trained strategy [
32]. However, the primary expectation is that benefits are largely confined to tasks similar to the training (near transfer), with limited impact on dissimilar tasks (far transfer) [
32].
Core WM training, in contrast, typically involves repetitive practice on demanding WM tasks designed to target domain-general WM mechanisms, often focusing on executive attention processes [
32]. These paradigms aim to strengthen core WM processes by limiting strategy use, minimizing automation, using varied stimuli/modalities, requiring maintenance amidst interference, imposing rapid processing demands, adapting difficulty to individual proficiency, and demanding high cognitive engagement [
32]. Because core training targets domain-general mechanisms, it is hypothesized to produce not only near transfer but also far transfer effects, improving performance on a wider range of cognitive tasks reliant on WM capacity [
32].
Evidence suggests that core WM training programs can indeed improve performance on non-trained WM tasks [
33]. For example, training developed by Klingberg and colleagues, involving adaptive WM tasks with feedback, led to improvements in general WM capacity, evidenced by better performance on untrained WM tasks differing in materials and testing mode [
33]. Notably, these training effects remained evident during follow-up evaluations conducted several months later [
33]. Such transfer effects to untrained tasks support the notion of training-induced neural plasticity within a shared WM network [
33].
Furthermore, some studies suggest potential far transfer effects to non-WM tasks, although findings are less consistent [
33]. For example, improvements in Stroop task performance were observed following WM training in children with ADHD and in young adults, but not in stroke patients [
33]. Preschool children who underwent training demonstrated enhanced performance on a continuous performance task assessing sustained attention [
33]. Furthermore, in children with ADHD, WM training was associated with a reduction in parent-reported inattentive symptoms (such as difficulty focusing, forgetfulness, or being easily distracted) [
33]. Core training studies thus seem to produce more far-reaching transfer effects compared to strategy training, likely due to targeting domain-general mechanisms [
32].
Neuroimaging studies provide insights into the neural correlates of WM training [
33]. Such training has been linked to alterations in brain activity, particularly within the frontal and parietal cortices, as well as the basal ganglia (specifically the caudate nucleus) [
33]. Increased activity in these regions, which form a frontoparietal network involved in WM and attention control, potentially underlies the observed improvements in WM capacity and the transfer of training effects [
33]. Changes in the basal ganglia might relate to improved selection of relevant information [
33]. Additionally, WM training has been linked to changes in dopamine receptor density [
33]. Specifically, increases in WM capacity following training correlated significantly with changes in cortical dopamine D1 receptor density [
33]. This suggests that dopamine systems might play a role in mediating training effects, potentially providing another mechanism for transfer if different tasks recruit common neurotransmitter systems [
33].
Despite promising findings, challenges remain in WM training research [
32]. Transfer effects, especially far transfer, are not always consistently found, particularly in older adults where benefits may be limited beyond the trained tasks [
32]. Methodological issues like the use of no-contact control groups (potentially vulnerable to expectancy effects) and reliance on single tasks to measure broad abilities need careful consideration [
32]. Lack of standardization across training programs and assessment measures also makes comparisons difficult [
32]. Future research needs to clarify the specific mechanisms driving training gains and use robust methodologies, including active control groups and multiple outcome measures, to validate the extent and nature of transfer effects [
32]. Nevertheless, the existing evidence suggests that WM training, particularly core training, can induce neuroplastic changes and may serve as a potential intervention for individuals whose academic or daily life functioning is limited by low WM capacity [
33]. Combining cognitive training with pharmacological approaches might represent a future direction [
33].
3.5. Reforming Habits Through Contextual and Self-Control Strategies
Habits, defined as learned dispositions to repeat past responses triggered by context features, play a significant role in daily behavior [
34]. They emerge from the gradual learning of associations between responses and cues in the performance context (e.g., locations, preceding actions, people) that have frequently covaried with past performance [
34]. Once formed, perception of these context cues can trigger the associated response automatically, without mediation by a conscious goal or intention [
34]. While habits often originate from past goal pursuit, where a behavior is repeatedly used to achieve an outcome, the acquired habit association itself is considered goal-independent [
34]. Habit strength independently predicts the repetition of everyday activities, even when controlling for goals or intentions [
34]. This slow learning process makes habits resistant to short-term behavioral changes driven by flexible goal pursuit [
34].
In the context of addiction, compulsive drug seeking can be understood as involving maladaptive stimulus-response habits, where behavior becomes governed by drug-related cues rather than the drug's current value or goal [
41]. This habitual control involves a shift towards dorsal striatal systems [
41]. Relapse following abstinence is often triggered when drug-seeking habits are reactivated by exposure to these drug-related cues [
45]. General behavioral characteristics of substance abusers, like impulsivity and poor decision-making, resemble effects of frontal lobe damage, highlighting the role of prefrontal systems in controlling habitual or impulsive behaviors [
45]. Neural networks involving the prefrontal cortex and striatum are typically implicated in self-control over such responses [
45].
Harnessing neuroplasticity for habit change involves strategies that target the cue-response link or the ability to exert control over habitual responses [
34]. One approach involves exerting control downstream after a habit cue has activated the response tendency [
34]. This typically requires effortful self-control or inhibition to suppress the unwanted habitual response [
34]. Success in inhibiting strong, conflicting habits appears dependent on available self-control capacity or regulatory resources [
34]. Exerting such control can be effortful and may deplete self-control resources [
34]. An avoidance strategy, involving monitoring for cues and vigilance against errors, can be effective for inhibiting conflicting habits [
34]. However, interventions based solely on effortful inhibition are unlikely to produce long-term habit change [
34]. Effortful inhibition may be most productive when paired with learning and performing a new, desired response in the presence of the old cue [
34].
A potentially more effective approach focuses on controlling habit triggering upstream by managing exposure to the cues themselves [
34]. This involves altering or avoiding the context cues that automatically elicit the habitual response [
34]. Strategies promoting avoidance of contact with habit-triggering cues are widely used in addiction treatment [
34]. Simple alterations to cues in performance contexts, such as in eating environments, have shown success in controlling habits like overeating [
34]. Reducing exposure to cues (e.g., disabling email notifications to reduce habitual checking) is an example of deliberate upstream control [
34].
Habit change can also be facilitated by naturalistic changes in life circumstances that disrupt the consistency of performance contexts [
34]. Events like moving house or changing jobs alter the cues associated with old habits, creating opportunities for change [
34]. When the performance context changes, individuals may be prompted to think more deliberately about their behavior, bringing actions more in line with current goals rather than old habits [
34]. Interventions can leverage these naturally occurring context changes as windows of opportunity for establishing new, desired habits [
34]. Understanding the mechanisms of habit formation and control, particularly the power of context cues and the distinction between goal-directed and habitual control, provides a framework for designing effective behavior change interventions that strategically target the neuroplastic processes underlying habits [
41].