Assessfy Capstone Lab Advanced 6 milestones 100 marks

Deep Learning-Based Chest X-Ray Diagnostic Assistant with Grad-CAM Visual Explanations

Branch: AI & Data Science Type: Industry-applied final-year Major Project Standard: Mumbai University Rev-2019 'C' Scheme (Major Project I + II) Group: up to 4 students Assessment: 6 review-based milestones (100 marks)

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6
Milestones
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Available mentors
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Enrolled students
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Core skills
About this project

Objective: To develop and deploy an AI-powered system for automated chest X-ray disease detection with interpretable Grad-CAM visual explanations to assist radiologists in Indian healthcare settings.

Chest diseases such as pneumonia, tuberculosis, and COVID-19 pose significant health burdens across India, where radiologist shortages and high patient volumes in public hospitals lead to delays and diagnostic errors, especially in rural and tier-2/3 cities.

This project proposes an end-to-end machine learning solution: a web-based assistant that analyzes chest X-ray images using deep convolutional neural networks, highlights pathological regions using Grad-CAM for interpretability, and presents findings in a user-friendly dashboard for clinicians.

Key deliverables include: (1) a trained and validated model deployed via an interactive web or desktop interface, (2) Grad-CAM heatmaps to explain predictions, (3) support for multiple chest conditions, (4) integration with open-source Indian chest X-ray datasets, and (5) a cost analysis and deployment on affordable hardware for practical adoption.

This solution can augment radiology workflows, reduce diagnostic errors, enhance trust in AI via transparency, and scale to resource-limited settings, with potential for integration into India’s public health infrastructure and telemedicine platforms.

Milestones
1. Synopsis & Problem Definition (Stage-I Review-1)
10 marks 28d
Submit a clear synopsis outlining the clinical need, problem statement, project scope, and initial feasibility, reviewed by faculty panel.
2. Literature / Market Survey & Requirement Analysis (Stage-I Review-2)
12 marks 28d
Conduct and present a survey of existing AI tools, research papers, Indian market solutions, and detailed requirements, evaluated through documentation and viva.
3. System Design, Methodology & Cost Analysis (Stage-I close)
18 marks 36d
Deliver system architecture, model selection, Grad-CAM integration plan, workflow diagrams, dataset choice, and detailed cost/feasibility analysis, reviewed via a design report and oral defense.
4. Implementation / Fabrication of Working Model (Stage-II Review-1)
25 marks 40d
Build and train the CNN model, implement Grad-CAM explanations, develop the dashboard/app, and integrate the pipeline; demonstrate a working prototype to the review panel.
5. Testing, Results & Validation (Stage-II Review-2)
20 marks 36d
Perform rigorous testing with Indian chest X-ray datasets, evaluate diagnostic accuracy and Grad-CAM outputs, and document validation results for panel review.
6. Report, Paper & Demonstration / Oral Defense (Stage-II final Oral & Practical)
15 marks 28d
Submit a comprehensive project report, IEEE-format paper, and deliver a live demonstration and oral defense before external examiners.
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Skills you'll learn
CapstoneFinal-year projectMajor projectAI & Data ScienceDeep learning model development (CNNs) for medical imagingModel interpretability and Grad-CAM visualization techniquesData pre-processingaugmentationand handling of DICOM/X-ray image formatsFront-end and back-end development for clinical dashboardsTestingvalidationand performance evaluation (sensitivityspecificityROC-AUC)Technical documentationpaper writingand oral presentationTeam collaboration and project management
Tools used
PythonTensorFlow or PyTorchOpenCV and pydicom for image handlingGrad-CAM libraries for explainabilityChest X-ray datasets (e.g.NIHBIMCVPadChestor Indian TB datasets)Flask/Django for web app backendBootstrap/React for dashboard UIHeroku or AWS/GCP for deploymentIS/IEC 62304 standard for medical device software lifecycle (overview)
Prerequisites
Machine Learning and Deep LearningMedical Image ProcessingData Structures and AlgorithmsSoftware Engineering / Web Technologies
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