Healthcare AI
Computer Vision
Our AI solutions enhance patient monitoring, predict disease risks, and automate diagnostics—helping medical professionals make informed decisions faster.
Chest X-Ray Disease Classifier
  • AI model that classifies conditions like pneumonia or TB from X-ray images.
  • Trained with medical datasets using CNN and attention mechanisms.
  • Highlights affected areas for doctor verification.
  • Used in rural clinics for second-opinion diagnostics.
  • Integrates with PACS and mobile diagnostic tools.
Lung Cancer Detection from CT Scans
  • CNN-based system to detect nodules and classify lung cancer stages.
  • Includes heatmaps for explainability.
  • Speeds up diagnosis and improves rural access.
Skin Cancer Detection
  • Classifies melanoma, carcinoma, and benign lesions.
  • Uses ISIC dataset and ResNet/Attention hybrid models.
  • Includes severity score and treatment suggestions.
  • Enhances early screening accuracy.
Brain Tumor Segmentation from MRI
  • UNet model for multi-class segmentation of glioma, meningioma, pituitary tumors.
  • Works with contrast MRI scans.
  • Assists neurosurgeons in planning and outcome assessment.
  • Deployed in diagnostic workstations.
Malnutrition Detection via Facial Analysis
  • AI model trained on facial features to detect signs of severe malnutrition.
  • Used in pediatric clinics and relief zones.
  • Classifies severity levels and generates case profiles.
  • Improves triaging in under-resourced areas.
Heart Disease Prediction from ECG
  • CNN + LSTM model trained on 12-lead ECG signals.
  • Detects arrhythmia, AFib, and early MI signs.
  • Used in remote patient monitoring systems.
  • Auto-generates structured medical reports.
Heart Disease Prediction from Patient Records
  • AI model predicts heart disease risk based on clinical health parameters.
  • Enables early intervention by flagging high-risk individuals.
  • Trained on large-scale anonymized patient data.
  • Boosts preventative care in cardiology.
  • Useful in telehealth platforms and wellness apps.
Retinal Vessel Segmentation for Diabetic Retinopathy
  • Segments blood vessels in retina scans to assess diabetic eye damage.
  • Supports early-stage detection before vision loss occurs.
  • Highlights vessel abnormalities and leakage patterns.
  • Used in teleophthalmology and diabetic care clinics.
  • Improves large-scale eye screening efficiency.
Dental Caries and Cavity Detection
  • AI-powered dental X-ray analyzer for automatic cavity detection.
  • Trained on thousands of panoramic dental radiographs.
  • Used in dental chains for pre-screening.
  • Classifies severity and suggests treatment action.
  • Streamlines appointment planning and reduces human error.
Clinical Grade Vital Signs Monitor
  • Wearable device for continuous patient monitoring using AI-enhanced sensors.
  • Tracks pulse, SpO2, breath rate, and blood pressure in 20 seconds.
  • Uses AI to filter noise and adapt to individual baselines.
  • Clinical-grade accuracy with real-time dashboard and alerting system.
  • Used in remote patient monitoring, hospitals, and wellness programs.
Cervical Cancer Prediction from Pap Smear Images
  • AI model trained to detect cancerous and pre-cancerous cervical cells from microscope images.
  • Helps in early detection and reduces human diagnostic errors.
  • Built using labeled cytology image datasets.
  • Assists gynecologists in automating screenings.
  • Ideal for women’s clinics and mobile health programs.
Breast Cancer Histopathology Classification
  • Classifies breast tissue samples into benign or malignant using deep learning.
  • Utilizes histopathology images to identify cancer presence at early stages.
  • Achieves high diagnostic accuracy by analyzing pixel patterns.
  • Enables second-opinion diagnostics for oncologists.
  • Perfect for labs, research centers, and pathology chains.
Diabetic Foot Ulcer Recognition
  • Automatically identifies ulcers in diabetic foot images for risk evaluation.
  • Helps prevent amputations by enabling timely intervention.
  • Trained on large sets of foot wound photographs.
  • Supports remote health workers and mobile screening.
  • Essential in chronic care management programs.
Liver Tumor Segmentation from CT
  • AI system segments liver tumors in CT scans for surgical planning.
  • Differentiates tumor from liver tissues with high precision.
  • Supports radiology teams in preoperative assessment.
  • Improves treatment planning and reduces annotation time.
  • Used in oncology imaging workflows.
Bone Fracture Detection in X-rays
  • Detects fractures in wrist, elbow, and knee bones using X-ray images.
  • Accelerates emergency diagnosis in trauma care.
  • Supports radiologists by flagging fracture zones.
  • Enables faster triaging and reduced diagnostic errors.
  • Ideal for hospitals, mobile X-ray units, and urgent care.
Knee Osteoarthritis Detection from Radiographs
  • Detects signs of osteoarthritis and grades severity from X-ray images.
  • Identifies joint space narrowing and bony changes.
  • Reduces manual variability in physician diagnosis.
  • Helps with monitoring disease progression over time.
  • Deployed in orthopedic care and digital health platforms.
Pneumonia Detection from Chest X-rays
  • Detects signs of pneumonia in pediatric and adult chest X-rays.
  • Provides AI-based triage support for healthcare professionals.
  • Used in busy hospitals and low-resource diagnostic centers.
  • Reduces diagnostic burden on radiologists.
  • Vital for pandemic response and emergency care.
COVID-19 Detection from CT Scans
  • Identifies COVID-19-related lung patterns from chest CT images.
  • Used to triage and manage suspected COVID-19 cases.
  • Provides fast AI feedback for overloaded radiology teams.
  • Improves early detection and patient prioritization.
  • Deployed during health crises and hospital surges.
Medical Waste Detection & Classification
  • Detects and classifies biomedical waste into predefined categories.
  • Enables compliance with environmental and disposal standards.
  • Supports real-time sorting in hospitals and waste plants.
  • Reduces contamination and improper disposal risks.
  • Used by healthcare providers and sanitation authorities.
ICU Patient Monitoring with AI Alerts
  • Predicts deterioration in ICU patients using clinical data patterns.
  • Generates alerts for sepsis, cardiac events, or respiratory failure.
  • Supports proactive monitoring with electronic medical records.
  • Reduces critical event response time.
  • Ideal for modern smart ICUs and hospital systems.
Post-Surgery Wound Infection Analysis
  • Analyzes wound photos to detect signs of infection post-surgery.
  • Tracks healing progress and flags abnormalities.
  • Reduces the need for in-person follow-ups.
  • Ideal for remote recovery monitoring and nursing support.
  • Helps surgeons take timely corrective actions.
Scoliosis Detection from Spine Scans
  • Detects abnormal spine curvatures and scoliosis severity.
  • Estimates Cobb angles using spinal X-ray images.
  • Used in early screening programs in schools and clinics.
  • Supports orthopedic diagnosis and brace treatment planning.
  • Enables digital record-keeping for spine evaluations.
Thyroid Nodule Classification from Ultrasound
  • Classifies thyroid nodules as benign or malignant from ultrasound scans.
  • Guides decisions on biopsy or active monitoring.
  • Reduces unnecessary procedures using AI interpretation.
  • Improves consistency in endocrinology clinics.
  • Integrates with portable ultrasound devices.
MRI-based Schizophrenia and Dementia Risk Predictor
  • Analyzes brain MRI scans to identify cognitive disorders.
  • Flags atrophy or anomalies linked to dementia or schizophrenia.
  • Used in clinical research and mental health diagnosis.
  • Supports early intervention for at-risk patients.
  • Integrated into neuroimaging analysis workflows.
Smart Stethoscope with AI Auscultation Analysis
  • AI-enhanced audio analysis for heart and lung sounds.
  • Detects murmurs, wheezes, and rhythm anomalies.
  • Integrated with digital stethoscopes for doctors and paramedics.
  • Supports remote patient care in telemedicine setups.
  • Improves access to diagnostics in rural clinics.
Neonatal Jaundice Detection from Skin Color
  • Computer vision model estimates bilirubin levels via baby skin tone.
  • Non-invasive, fast screening for neonatal jaundice.
  • Deployed in mobile health kits and rural delivery units.
  • Reduces reliance on blood tests in remote areas.
  • Promotes early treatment in newborn care programs.
Blood Cell Classification for Anemia/Malaria
  • Classifies red and white blood cells to detect anemia or malaria.
  • Analyzes microscope blood smear images using deep learning.
  • Used in labs and portable diagnostic units.
  • Assists in mass screenings and field clinics.
  • Speeds up diagnosis and improves accuracy in critical care.
DNA Sequence Classifier for Disease Detection
  • AI analyzes DNA sequences to identify disease-linked gene expressions.
  • Supports early genetic screening and personalized medicine.
  • Utilizes RNA sequencing datasets and feature engineering.
  • Assists bioinformatics labs and research units.
  • Promotes genomic diagnostics and therapy design.
Protein Structure Function Predictor
  • AI predicts protein folding patterns and biological functions.
  • Aids pharmaceutical companies in drug target discovery.
  • Accelerates biomedical research and compound screening.
  • Applies deep learning to protein sequencing data.
  • Used in biotech R&D and molecular biology labs.
Molecular Property Prediction for Drug Discovery
  • Machine learning predicts activity and toxicity of molecules.
  • Streamlines early-stage pharmaceutical research.
  • Reduces the cost of compound screening.
  • Supports virtual lab environments.
  • Enables faster drug development pipelines.
Adverse Drug Reaction Prediction from Patient Reviews
  • Natural language processing flags drug side effects from real-world reviews.
  • Improves post-marketing surveillance of medications.
  • Assists pharmaceutical companies in identifying safety risks.
  • Supports regulatory compliance.
  • Deployable as a pharma feedback intelligence tool.
Drug-Target Interaction Prediction
  • Deep learning identifies how drugs bind to biological targets.
  • Speeds up new drug candidate discovery.
  • Uses chemical and protein features for interaction mapping.
  • Enhances precision in computational drug screening.
  • Used by pharmaceutical research and biotech startups.
Parkinson’s Disease Prediction Using Voice Analysis
  • AI analyzes voice recordings to detect signs of Parkinson’s.
  • Detects speech variations linked to neurological decline.
  • Supports early screening and remote assessments.
  • Trained on patient audio datasets.
  • Used in neuro AI diagnostics and mobile health apps.
Get in Touch Today to Start Transforming Your Business with Our Expert Technology Solutions
Get in Touch Today to Start Transforming Your Business with Our Expert Technology Solutions