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Netramark Unveils AI Driven Insights for Major Depressive Disorder and Schizophrenia at ISCTM Conference

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TORONTO, ON / ACCESS Newswire / March 5, 2025 / NetraMark Holdings Inc. (the "Company" or "NetraMark") (CSE:AIAI)(OTCQB:AINMF)(Frankfurt:8TV) a generative AI software leader in clinical trial analytics, presented two significant studies at the International Society for CNS Clinical Trials and Methodology (ISCTM) conference, showcasing the power of advanced machine learning in major depressive disorder (MDD) and schizophrenia clinical trials.

Mathematically Augmented Machine Learning Redefines MDD Clinical Trial Insights

NetraMark's first presentation, "Novel Machine Learning Approach Outperforms Traditional Approaches in Major Depressive Disorder Clinical Trials", demonstrated how NetraAI Sub-Insight Learning enhances patient stratification in MDD clinical trials over traditional methods.

NetraAI was designed to address the challenges of modeling clinical trial data, where traditional Machine Learning (ML), including deep learning, often falls short. Built to identify optimal patient cohorts for future trials, NetraAI enhances established ML methods by uncovering key variable combinations. In this presentation, NetraMark applied NetraAI to the CAN-BIND trial on escitalopram response, demonstrating its ability to significantly improve industry-standard ML models, the study revealed:

● NetraAI-driven patient subpopulation analysis led to a 28% increase in model accuracy compared to traditional ML approaches.

● Sensitivity improved by 31%, while specificity increased by 51%, reducing false-positive rates.

● NetraAI successfully identified key combinations of variables that refine inclusion/exclusion criteria for more efficient trial design.

● This is made possible through NetraAI's ability to discover which patients can be explained and those that cannot.

NetraAI identifies and explains key variable combinations, offering deeper insights into drug and placebo response. When NetraAI-derived variables were fed to traditional ML methods, the resulting performance was significantly enhanced, as shown in the table below.

Traditional

Method

Accuracy of Traditional

Method Alone (%)

Accuracy of Traditional

Method using NetraAI

derived variables (%)

Improvement (%)

Logistic Regression

54.29

77.14

+22.85

XGBoost

65.71

91.43

+25.72

Random Forest

62.86

82.86

+20.00

SVM

60.00

100.00

+40.00

Neural Network

60.00

77.14

+17.14

"This advancement validates NetraAI's ability to learn about complex clinical trial patient populations in a way that modern ML methods cannot, and this can translate to significantly improving clinical trial outcomes," said Dr. Joseph Geraci, Chief Technology Officer and Chief Scientific Officer of NetraMark