InMed

Decipher the Silent Epidemic

NeuroShield CT is an AI enabled Tool to optimize the “Golden hour”in neurotrauma.

Neuroshield CT automatically screens all the Head CTs in a hospital system, identifies cases with pathologies such as bleeds, fractures, midline shift and flags them to the radiologists and clinician team thus helping them manage their workflow more efficiently by prioritizing cases that need the golden hour intervention on a timely basis.

Neuroshield CT also provides a detailed analysis report. This quantifies and locates the bleeds, fractures and midline shift thus providing most valuable information on a timely basis that will help the acute care team triage effectively and devise optimal treatment plans for the patients in their hour of need.

The product is integrated into the clinical and radiology workflow and efficiently prioritizing critical cases that require immediate attention; reduces radiologist burnout and overload.

Empowering Possibilities: What We Can Do for You

Benefits

“We are delighted to partner with In-Med Prognostics in developing a solution for automatic reading of Head CTs in traumatic brain injuries. Using this solution, patients can be automatically triaged for review by a neurosurgeon and patients with normal scans can be discharged without intervention of radiologists or Neurosurgeons. This is a distinctive technology with the potential to transform emergency care across the world.“
Dr. Deepak Agrawal
Professor-Neurosurgery, AIIMS Trauma Centre, New Delhi

What Experts Say

How We Do It?

                         WE RESEARCH

InMed distinguishes itself by prioritizing extensive research, paving the way for groundbreaking advancements in

A 2D U-NET combined model based on lesion size for automated stroke lesion segmentation

The 2D U-NET architecture used in segmenting the ROIs is based on the format to include the lesion size, lesion volume and their locations in the left and right hemisphere of the brain, and cortical and subcortical brain regions. The dice score for this model was 0.822 on the testing set. This result shows that considering the lesion sizes and volumes can help in obtaining a precise and automated segmentation model.

Automated Midline Shift Detectionand Quantification in Traumatic Brain Injury: A Comprehensive Review

This review summarizes the current state of research on AI-based approaches for MLS analysis in TBI cases, identify the methodologies employed, evaluate the performance of the algorithms, and draw conclusions regarding their potential clinical applicability.The findings highlight the importance of AI techniques in improving MLS diagnosis and guiding clinical decision-making in TBI management.

Automated,intracranial hemorrhage detection in traumatic brain injury using 3D CNN

We developed a 3D CNN model for automatically detecting the ICH from head CT scans. The screening tool was tested in 20 cases and trained on 200 head CT scans, with 99 normal head CT and 101 CT scans with some type of ICH. The final model performed with 90% sensitivity, 70% specificity, and 80% accuracy.

Automated detection of intracranial hemorrhage from head CT scans applying deep learning techniques in traumatic braininjuries:A comparative review

This review articles summarizes evidence as to how technology can be utilized rightly for increasing the efficiency of the clinical workflow in emergency cases. Our review shows that AI algorithms can prioritize radiology worklists to reduce time to screen for ICH in the head scans sufficiently and may also identify subtle ICH overlooked by radiologists, and that automated ICH detection tool holds promise for introduction into routine clinical practice.

3D CNN-based Automated Detection of Midline Shift in Traumatic Brain Injury Cases from Head CT scans 

In this study, we sought to determine the accuracy and the prognostic value of our screening tool that automatically detects MLS on computed tomography (CT) images in patients with traumatic brain Injuries (TBI). The study enrolled TBI cases who presented at the Department of Neurosurgery, All India Institute of Medical Sciences, New Delhi. The model showed an accuracy of 55% with high specificity (70%) and moderate sensitivity of 40%.  
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