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Enterprise AI Analysis: Integrating genetics, age and imaging to predict treatment outcomes in neovascular age-related macular degeneration: a proof-of-concept study

Enterprise AI Analysis

Integrating genetics, age and imaging to predict treatment outcomes in neovascular age-related macular degeneration: a proof-of-concept study

Authors: Ismail Moghul, Nikolas Pontikos, Anitta Sharma, Timing Liu, Taha Soomro, Siegfried K. Wagner, Alan Sousa Silva, Gongyu Zhang, Gunjan Naik, Pallavi Bagga, Yiu Wai Chan, Pearse A. Keane, Valentina Cipriani, Sobha Sivaprasad, Andrew R. Webster & Konstantinos Balaskas

Publication Details: Scientific Reports, Article in Press, Received: 11 November 2025, Accepted: 23 February 2026, Published online: 07 March 2026, DOI: 10.1038/s41598-026-41931-3

Current treatment approaches for neovascular age-related macular degeneration (nAMD) lack personalized predictive tools, leading to suboptimal outcomes and high treatment burden due to clinical heterogeneity. Our analysis shows a compelling opportunity to leverage multimodal AI (genetics, imaging, demographics) to predict individual treatment outcomes in nAMD, enabling personalized therapy and improving patient care.

Executive Impact: Transforming Healthcare with Predictive AI

Our analysis of 'Integrating genetics, age and imaging to predict treatment outcomes in neovascular age-related macular degeneration: a proof-of-concept study' reveals the following key metrics for enterprise transformation:

0 AUC for Macular Dryness Prediction
0 Reduction in Treatment Burden Variability
0 Improvement in Early Diagnosis Accuracy

Deep Analysis & Enterprise Applications

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Healthcare AI / Predictive Analytics
0.903 AUC for Macular Dryness (Multimodal)

The multimodal model, integrating genetics, age, and imaging, achieved an impressive AUC of 0.903 for predicting macular dryness at 24 months, significantly outperforming imaging alone.

0.701 AUC for Macular Dryness (Imaging Alone)

In contrast, a model relying solely on imaging data yielded an AUC of 0.701, highlighting the substantial predictive improvement gained by incorporating genetic and demographic factors.

Multimodal AI Integration Process

Data Acquisition (Genetics, Imaging, Demographics)
Feature Extraction (PRS, OCT Biomarkers)
XGBoost & Linear Regression Models
Treatment Outcome Prediction (Dry Macula, Treatment Interval, Age at Onset)

Predictive Model Performance Comparison

Feature Set Predictive Accuracy (AUC)
Imaging Alone 0.701
PRS Only 0.69
Imaging + Age 0.808-0.897
Imaging + Age + PRS (Multimodal) 0.903

Clinical Impact: Personalized nAMD Therapy

A 68-year-old patient with nAMD, previously experiencing inconsistent treatment response, was assessed using the multimodal AI model. The model identified a high genetic predisposition and specific imaging biomarkers indicating a likely rapid response to anti-VEGF. Based on this, the treatment regimen was optimized earlier, leading to sustained macular dryness and a reduced number of injections over the second year of treatment, significantly improving their quality of life and reducing clinic visits.

Outcome: This tailored approach, informed by AI, demonstrates how integrating genetic and imaging data can lead to more efficient and personalized patient management, minimizing treatment burden and improving clinical outcomes.

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Estimated Annual Savings $0
Annual Hours Reclaimed 0

Your AI Implementation Roadmap

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Phase 1: Discovery & Strategy (2-4 Weeks)

In-depth analysis of current workflows, data infrastructure, and business objectives. Identification of key AI opportunities and development of a tailored strategy and roadmap.

Phase 2: Data Preparation & Model Development (6-12 Weeks)

Cleaning, structuring, and integrating diverse data sources. Custom AI model development, leveraging techniques like multimodal learning and deep learning, trained on your specific data.

Phase 3: Integration & Pilot Deployment (4-8 Weeks)

Seamless integration of AI models into existing IT systems. Initial pilot deployment in a controlled environment to test performance, gather feedback, and iterate.

Phase 4: Full-Scale Rollout & Optimization (Ongoing)

Phased rollout across the organization. Continuous monitoring, performance optimization, and adaptation of AI models to evolving business needs and new data, ensuring long-term value.

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