

novatechset
17th December 2025.Over the past few years, many scholarly journals have seen a sharp rise in submissions, broader interdisciplinary work, and a growing demand for speed, all while maintaining rigorous quality and integrity. For editorial teams, this has meant increased workloads, tighter deadlines, and mounting risk: rushed checks, overwhelmed reviewers, delayed decisions, and the constant fear that something may slip through.
In response, more publishers and journal managers are exploring a hybrid model: combining human judgment with AI-powered assistance. This is not about replacing editors; it is about helping them manage scale, complexity, and quality sustainably.
When we say “human+AI workflow,” we mean a process where artificial intelligence handles well-defined, repetitive or rule-based tasks, while human editors retain responsibility for judgment calls, interpretation, and ethical decisions. In such a system, AI might run checks or flag issues, but humans make the final call. This differs from a fully automated workflow in which AI would attempt to replace human decisions altogether. In scholarly publishing, the hybrid model tends to offer the best of both worlds, efficiency without compromising editorial standards.
In practice, there are several kinds of editorial tasks where AI can meaningfully help, without overstepping its limits. For instance:
Despite what AI can do, there are critical aspects where human editors must stay involved. AI cannot, and should not, replace:

For editorial leaders looking to balance integrity with throughput, hybrid workflows offer real benefits. AI-assisted screening reduces the initial workload and helps maintain consistent standards across submissions. Editors save time on routine checks and can dedicate more hours to reviewing substance, improving quality of decisions.
For journals overwhelmed with volume, this can reduce bottlenecks and shorten turnaround times. According to a recent industry-wide survey, about 60 percent of publishing companies have already integrated some form or the other of AI tools into their workflow (Source: Zipdo). This suggests that hybrid models are not just a theoretical idea, they are becoming mainstream in publishing operations.
Adopting a hybrid workflow is not without challenges. One major risk is over-reliance on AI outputs without sufficient human oversight. AI tools may flag too many false positives (overly cautious), or worse, miss subtle issues. Another challenge is integrating AI tools with existing editorial systems and workflows, especially in legacy setups.
Finally, there are ethical and transparency concerns; many journals are still figuring out how to acknowledge AI’s role in manuscript handling. Indeed, a recent analysis found that among the top 100 academic publishers, fewer than 20 percent had clear guidance on AI usage (Source: Arxiv)
When addressing these challenges, successful teams often start small, pilot AI for one or two tasks, document clearly what is automated vs what is human-reviewed and build internal guidelines. That combination of care, clarity, and gradual adoption tends to build trust in the hybrid model.
If adopted thoughtfully, hybrid human+AI workflows can help scholarly publishing adapt to increasing scale without sacrificing integrity. As submission volumes grow and demand for rapid publication rises, AI can help relieve editors from repetitive burdens, while human expertise continues to safeguard quality, fairness, and scientific integrity. Over time, we may see broader adoption, more efficient editorial cycles, and potentially better support for emerging or under-resourced journals. The future could belong to editorial teams that blend human insight with machine efficiency.
The idea of using AI in editorial workflows may initially feel risky or impersonal; after all, academic publishing depends on human judgment, nuance, and trust. But when viewed as a collaborative aid rather than a replacement, AI has the potential to make editorial processes more robust, scalable, and efficient. For journal managers, editors-in-chief, and publishing operations leaders, exploring hybrid models does not mean compromising standards. Rather, it can mean preserving them while adapting to the demands of modern scholarly publishing. Human judgement, supported by AI where it adds value, could very well be the future many academic publishers need.
If you are looking to strengthen your editorial workflows, our team can help you build a model that blends the best of human expertise with thoughtful AI support. Explore our editorial services to learn more.