We created the first platform, powered by responsible AI, to assist doctors testifying in legal cases. Our system streamlines the review of tens of thousands of pages, pinpointing critical information to help doctors form well-informed opinions in hours instead of days. Designed with transparency in mind, it allows doctors to easily fact-check AI-generated insights, ensuring they can confidently validate and take ownership of their findings.
Problem statement
Evaluating personal injury cases costs $20-50K per review of 20-30 hours, diverting valuable doctor time from helping their patients to sifting through thousands of disorganized, low-quality documents.
Our Goal
Create the evaluation for the doctor within 10 minutes, allowing the doctor to come to a strong conclusion in a matter of hours.
Document ingestion
Our approach
We use an algorithmic approach combined with a vision model we built and trained. This allows us to understand where one document ends and another begins. Our current accuracy stands at 97%, well above the required threshold. We can OCR and split 20 PDFs, totaling 2,000 pages, in under 10 minutes.
Integration with the rest of the process
We use a custom visual model trained to detect document boundaries within PDFs, creating a JSON file that maps OCRed content in our database. The result? We transform chaotic, disorganized data into a structured format, ready for seamless analysis—so our clients never have to worry about organizing data again.
The challenge we tackle: navigating thousands of pages filled with low-value information to uncover the critical high-value insights hidden within.
Model Evaluation
We created our own layer of logic to quickly test and deploy “agents” that are customized for a specific task (e.g., looking for events, or answering nuanced medical questions based on dense text). We rely on general purpose models and custom trained models, depending on the context and success rate.
API Calls are easy, consistent results are not
Surgeon Report
____ presented to Emergency Department after motor vehicle collision. is reported that she was the restrained driver of a vehicle that was struck from behind. She arrived to ED via ambulance with the chief complaint of
Cervical spine radiographs interpreted by ____. Dr. ____ summarized: Alignment is normal. No fracture or subluxation. Disc spaces well maintained. Prevertebral soft tissues unremarkable. Lumbar spine radiographs interpreted____. Dr. ____ summarized: Alignment is normal. No fracture or subluxation. Disc spaces well maintained. Minimal marginal osteophytes at several levels.
Gemini
____, a __-year-old female, arrived by ambulance at the ____ Hospital emergency department at 1:47 AM following a motor vehicle collision. She complained of moderate
MedLM
The patient was involved in a motor vehicle collision and presented to the emergency department with
On physical examination, the patient had
Radiographs of the cervical and lumbar spine were negative for fracture or subluxation.
The patient was diagnosed with neck and back pain/strain and was discharged home with instructions to follow up with her primary care physician within 1 week.
She was prescribed Flexeril 10 mg oral tablet 3 times daily and Ultram 50 mg oral tablet every 8 hours as needed for pain.
We provide a seamless web application experience by managing every detail: from user experience research and interface design to ensuring authentication and authorization layers meet client requirements. In this specific project, we also ensured full compliance with HIPAA and ISO standards.
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