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Reimagining occupational psychiatry in Asia: the case for mental health digital twins

Published online by Cambridge University Press:  15 December 2025

Ajay Jose*
Affiliation:
School of Business & Management, CHRIST University, Bengaluru, Karnataka, India
Sonia Mathew
Affiliation:
School of Business & Management, CHRIST University, Bengaluru, Karnataka, India
*
Correspondence: Ajay Jose. Email: joseajay@gmail.com
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Abstract

Information

Type
Letter
Copyright
© The Author(s), 2025. Published by Cambridge University Press on behalf of Royal College of Psychiatrists

The post-pandemic workplace in Asia has witnessed a marked escalation in psychological distress across essential sectors including healthcare, education, call centres, logistics and the gig economy. Burnout levels as high as 62.91% have been documented in several subregions, and emotional exhaustion has become a routine feature of occupational life rather than an individual vulnerability. Reference Abdul Aziz and Ong1 Traditional occupational health systems, however, remain largely reactive, addressing mental health complaints only after they reach critical and often debilitating thresholds. Reference Mathew, Jose and Rejikumar2 Against this backdrop, mental health digital twins (MHDTs) have emerged as a conceptual framework that could help to shift occupational psychiatry from crisis management towards early recognition and preventive care, particularly in environments where conventional services are overwhelmed.

The ‘digital twin’ concept originated in engineering, where dynamic digital replicas simulate the performance of physical systems. Translated into psychiatry, MHDTs could integrate real-time data from multiple sources, such as wearable devices tracking sleep and heart-rate variability, digital behaviour markers from smartphones, and ecological momentary assessments of mood, to identify early deviations from emotional baseline functioning. Crucially, MHDTs differ from generic digital monitoring or app-based screening because they build adaptive, individualised models that evolve with each new data point, allowing a dynamic representation of a person’s baseline functioning. Reference Sadée, Testa, Barba, Hartmann, Schuessler and Thieme3 Adjacent approaches, such as digital phenotyping and precision psychiatry, generate predictive indicators but do not maintain a continuously updated simulation of an individual over time. Digital phenotyping and precision psychiatry approaches generate powerful real-time indicators and stratifications, but the ‘digital twin’ concept, as currently defined in the health literature, additionally implies a continuously updated, simulation-capable model of an individual, a distinction worth noting as these fields converge. Early pilots in non-Asian settings, including digital twins for clinician workload optimisation and virtual-reality-based stress management simulations for first responders, have shown potential but remain limited in scale. Reference Partarakis, Evdaimon, Katsantonis and Zabulis4 These examples demonstrate that although MHDTs are conceptually promising, their application in Asian workplaces requires careful adaptation to local conditions, workforce patterns and cultural norms.

Asia’s workforce faces unique psychosocial vulnerabilities, including long working hours, economic uncertainty and collectivist cultural norms that impede help-seeking. Reference Thomas5 According to recent international survey data, fewer than one in seven individuals with depression or anxiety in Asia actually receives professional mental health treatment; this represents a persistent and critical gap in care provision. Reference Viana, Kazdin, Harris, Stein, Vigo and Hwang6 These characteristics directly affect how early warning systems could be interpreted and used. MHDTs could complement existing occupational and clinical systems by helping to identify early deviations from usual functioning and facilitating timely, confidential support before burnout or breakdown occurs. However, cultural nuance is critical: Reference Jose and Mathew7 algorithms trained primarily on Western data-sets risk misclassification if they fail to recognise culturally normative expressions of stress. Culturally informed data collection, local language interfaces and region-specific model calibration are essential for ensuring predictive validity and public trust. Reference Rony, Das, Khatun, Ferdousi, Akter and Khatun8 Transferability, therefore, depends not only on technological sophistication but also on thoughtful integration with Asia’s diverse sociocultural landscapes.

Robust ethical frameworks must anchor any consideration of MHDT use in workplaces. Digital monitoring is already common in sectors such as manufacturing, logistics and call centres, raising legitimate concerns that mental health data could be repurposed for productivity assessments, hiring decisions or punitive actions. Ethical deployment must be grounded in the principles articulated by Beauchamp and Childress: Reference Beauchamp and Childress9 autonomy, beneficence, non-maleficence and justice. These principles require that participation be voluntary and consent revocable, and that the boundaries between clinical and managerial data are strictly maintained. Justice additionally demands attention to the risks of algorithmic bias, particularly for workers who differ by gender, race, caste or socioeconomic status. An explicitly articulated prohibition on using MHDT data for employment decisions would be a necessary safeguard. Without such protections, MHDTs risk reinforcing power asymmetries in workplaces rather than promoting well-being.

Technical feasibility further complicates potential implementation. Asian workplaces and health systems vary widely in their digital infrastructure, data standards and interoperability. Continuous data streams require reliable connectivity, secure cloud environments and harmonised electronic health records, resources that remain unevenly distributed across the region. At a scientific level, MHDTs remain limited by an incomplete understanding of neurobiological mechanisms underlying mental health, inconsistencies in sensor-derived data and biases embedded in training data-sets. False positives, noise in behavioural signals and over-alerting can erode user confidence and place an additional burden on the clinicians who must interpret ambiguous digital indicators alongside use of their clinical judgement. For MHDTs to function meaningfully, mental health professionals need training not only in digital ethics but also in reading digital biomarkers, managing uncertainty and communicating risk sensitively. Initial pilot projects in high-burnout sectors such as healthcare and education, conducted under independent ethical oversight, could generate essential evidence on accuracy, usability, acceptability and potential unintended effects.

Given these considerations, MHDTs should not be viewed as a technological solution to systemic challenges but rather as one possible tool within a broader, human-centred approach to occupational mental health. Asia faces significant disparities in mental health service availability, with workforce shortages, long waiting times and uneven distribution of specialist care. The introduction of MHDTs must therefore be aligned with ongoing efforts to expand mental health capacity and reduce barriers to help-seeking. Pilot programmes could test hybrid models in which MHDTs are used to trigger confidential outreach from trained counsellors, peer-support systems or occupational physicians rather than automated responses. Region-specific guidelines, co-developed by professional associations, government agencies and technology partners, could help to define acceptable use, data governance standards and accountability mechanisms. Although regulatory frameworks across Asia remain heterogeneous, emerging efforts, such as India’s Digital Personal Data Protection Act (2023) and parallel discussions on artificial intelligence governance, offer potential foundations for responsible MHDT integration.

The shift from episodic monitoring to continuous modelling represents an important (though still conceptual) frontier for occupational psychiatry in Asia. The value of MHDTs will depend not on technological novelty alone but also on cultural sensitivity, ethical safeguards, transparent governance and meaningful clinician engagement. When approached with caution, MHDTs may help organisations and clinicians to recognise emerging distress earlier, enabling more humane and equitable responses. Their promise lies not in replacing human judgement or transforming care overnight, but in complementing existing systems and supporting a broader commitment to the well-being of Asia’s diverse and rapidly evolving workforce.

Author contributions

Both authors contributed to conceptualisation, literature review and drafting and revision of the manuscript.

Funding

This study received no specific grant from any funding agency, commercial or not-for-profit sectors.

Declaration of interest

None.

References

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