AI Transforms Glaucoma Care: New Screening System Unveiled

Imagine walking into a supermarket, train station, or shopping mall and having your eyes screened for glaucoma within seconds--no appointment needed. With the AI-based Glaucoma Screening (AI-GS) network, this vision could soon become a reality.

Glaucoma is the leading cause of irreversible blindness in Japan and worldwide. Early detection is critical, as the disease progresses silently, slowly constricting one's peripheral field of vision. Patients often don't notice this loss of vision at first, which means that extensive and irreversible damage can occur before a patient even thinks about booking a doctor's appointment. As a result, many cases remain undiagnosed due to the limited availability of ophthalmologists and the challenges of conducting mass screenings, particularly in resource-limited regions.

"This is why we developed a new, quick, portable testing method. It analyzes multiple key indicators of glaucoma, integrates the findings, and determines the presence of the disease with unprecedented precision," explains Professor Toru Nakazawa (Tohoku University).

The AI-GS was developed by a research team led by Nakazawa and Associate Professor Parmanand Sharma at the Graduate School of Medicine (Tohoku University).

Overview of the AI-Based Glaucoma Screening (AI-GS) network. The process begins with an image of the retina captured by a fundus camera. The AI-GS network employs lightweight AI models to analyze the image, producing outputs such as segmented images, quantitative values of glaucoma-related features, and their presence in the image. Based on a comprehensive analysis, the system generates a final recommendation: "Normal" or "Consult an ophthalmologist." ©Sharma et. al.

The AI-GS network was tested on a dataset of 8,000 fundus images of the back of the eye (where glaucomatous damage occurs), achieving an impressive 93.52% sensitivity at 95% specificity--a level comparable to expert ophthalmologists. Unlike traditional AI models, this system excels at detecting early-stage glaucoma, even in cases where fundus abnormalities are subtle and difficult to recognize.

A major challenge in AI-driven healthcare is its lack of interpretability--the so-called "black box" problem where it's unclear what steps the AI made to come to a conclusion. AI-GS solves this by providing numerical values for each diagnostic feature, allowing ophthalmologists to understand and verify its decision-making process. This transparency enhances trust and facilitates seamless integration into clinical practice.

Another important aspect of making practical implementation as simple as possible was size. At just 110 MB, the AI-GS network is designed for portability and efficiency. It requires minimal computational power and delivers diagnostic results in under a second.

"AI-GS brings expert-level glaucoma screening to your pocket, complementing specialist evaluations," says Associate Professor Parmanand Sharma (Tohoku University), "It can be run on a mobile device and used in all sorts of public places because of its portability. You can run screenings at train stations or even remote regions that otherwise have limited access to ophthalmologists."

"This AI technology bridges a critical gap in glaucoma detection by making specialist-level diagnostics accessible to underserved communities," remarks Professor Nakazawa, "By enabling early detection on a large scale, we have the potential to prevent blindness for millions worldwide."

With its high accuracy, AI explainability, and lightweight design, the AI-GS network represents a major breakthrough in AI-driven ophthalmology, bringing glaucoma screening out of hospitals and into everyday life. Large-scale implementation of this system could revolutionize glaucoma care, ensuring that no patient is left undiagnosed due to a lack of access to specialists.

Publication Details:

Title: A hybrid multi model artificial intelligence approach for glaucoma screening using fundus images

Authors: Parmanand Sharma, Naoki Takahashi, Takahiro Ninomiya, Masataka Sato, Satoru Tsuda &Toru Nakazawa

Journal: npj | Digital Medicine

DOI: 10.1038/s41746-025-01473-w

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