SBIR-STTR Award

Rapid Profiling of the Plasma Proteome and Machine Learning Analytics for Non-Invasive Diagnosis of Alzheimer's Disease
Award last edited on: 3/2/2021

Sponsored Program
SBIR
Awarding Agency
NIH : NIA
Total Award Amount
$2,041,017
Award Phase
2
Solicitation Topic Code
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Principal Investigator
William Clarence Manning

Company Information

Seer Inc

3800 Bridge Parkway Suite 102
Redwood City, CA 94065
   (650) 453-0000
   info@seer.bio
   www.seer.bio
Location: Single
Congr. District: 15
County: San Mateo

Phase I

Contract Number: N/A
Start Date: 9/1/2019    Completed: 5/31/2021
Phase I year
2019
Phase I Amount
$1
Direct to Phase II

Phase II

Contract Number: 1R44AG065051-01
Start Date: 00/00/00    Completed: 00/00/00
Phase II year
2019
(last award dollars: 2020)
Phase II Amount
$2,041,016

The main objective of this project is to develop an innovative blood-based test for highly sensitive and specific, non-invasive and cost-efficient diagnosis of Alzheimer's disease (AD), which would leverage Seer's proprietary Proteograph platform enabled by the convergence of nanotechnology, protein corona, proteomics, and data science. Beyond neuropsychological testing, two approaches have thus far been clinically validated for AD detection, including neuroimaging and analysis of cerebrospinal fluid (CSF)-based biomarkers (e.g., amyloid-? or A?). In contrast to the neuroimaging (which is expensive and time-consuming) and CSF analysis (which is less expensive, but involves an invasive lumbar puncture procedure), a blood-based test for AD diagnosis has the potential to be dramatically less costly and easier to implement. Nevertheless, the search for reliable blood- based biomarkers has been challenging and the blood-based detection using ELISA or other epitope-based methods that go after a few biomarkers (e.g., A?42 or Tau) have not been successful, presumably owing to the vast dynamic range and high complexity of the plasma components. We have recently demonstrated that our multi-nanoparticle (NP) protein corona technology can facilitate broad and deep profiling of plasma proteome, and by combining with machine learning approaches, could lead to the development of Proteograph classifiers for highly accurate detection of different diseases including AD. As compared to current mass spectrometry- based proteomic techniques that require complex and time-consuming depletion or fractionation workflows for detection of low abundance/rare proteins, our multi-NP protein corona strategy is fast and high-throughput for analysis of the vast body of information in the proteome. In this Direct Phase II project, we will build upon the proof-of-concept studies to further test how Seer's Proteograph platform can be applied to develop a robust blood-based test to detect AD. Specifically, we will identify a panel (~6-10) of NPs from Seer's NP library for broad and deep coverage of the plasma proteome of AD patients (Aim 1); develop Proteograph classifiers and identify the proteins critical for classification through machine learning of the proteomic data generated from the panel of NPs with a cohort of 150 plasma samples of AD and healthy controls (Aim 2); and validate the accuracy of the detection test (based on the important proteins identified in Aim 2) in a separate blind cohort of 450 A?-positive AD patients and healthy controls (Aim 3). We expect that the successful completion of this SBIR project will lead to the clinical use of a blood-based AD test, which could further benefit earlier treatment, therapeutic outcomes, and health costs and quality of life for the elderly.

Public Health Relevance Statement:
NARRATIVE Alzheimer's disease (AD) is the 6th-leading cause of death in the United States, and it is projected that nearly 14 million Americans will be living with AD by 2050, according to the Alzheimer's Association, translating to a healthcare cost of ~$1.1 trillion. Accurate and early identification of AD, ideally at the earliest symptomatic or even pre-symptomatic stage, could facilitate better monitoring of therapy response and better planning for the care of family members with the disease, thus offering a tremendous economic impact. In this Direct Phase II SBIR project, we will develop a highly sensitive and specific, non-invasive, and cost-effective blood-based test for routine diagnosis of AD, which represents one of the greatest medical challenges of this era.

NIH Spending Category:
Acquired Cognitive Impairment; Aging; Alzheimer's Disease; Alzheimer's Disease including Alzheimer's Disease Related Dementias (AD/ADRD); Bioengineering; Biotechnology; Brain Disorders; Data Science; Dementia; Machine Learning and Artificial Intelligence; Nanotechnology; Neurodegenerative; Neurosciences; Prevention

Project Terms:
Address; Alzheimer disease detection; Alzheimer's Disease; American; Amyloid beta-Protein; base; Binding; Biological; Biological Markers; blind; Blood; blood-based biomarker; Brain; Caring; Cause of Death; Cerebrospinal Fluid; Charge; Classification; Clinical; clinical practice; Clinical Research; Clinical Trials; Cluster Analysis; Cognitive; cohort; Communication; comorbidity; Complex; Consumption; cost; cost effective; cost efficient; Data; Data Science; Detection; Development; Diagnosis; Diagnostic; Diagnostic tests; Disease; disease diagnosis; disorder control; Early Diagnosis; Early identification; Early treatment; economic impact; Elderly; Enzyme-Linked Immunosorbent Assay; Epitopes; Family member; Fingerprint; Fractionation; Gender; Health Care Costs; Health Status; high throughput analysis; Hydrophobicity; Individual; Industry; innovation; Investments; Laboratories; Lead; Legal patent; Libraries; liquid chromatography mass spectrometry; Liquid substance; Literature; Machine Learning; Malignant Neoplasms; Manuscripts; Mass Spectrum Analysis; Medical; Methods; mild cognitive impairment; Monitor; nanoparticle; Nanotechnology; Nature; neuroimaging; Neuropsychological Tests; noninvasive diagnosis; novel; novel therapeutics; off-patent; Patients; Pattern; Phase; Plasma; Plasma Proteins; Population; Privatization; Procedures; Process; programs; Property; Protein Analysis; Proteins; Proteome; Proteomics; Publishing; Puncture procedure; Quality of life; Reproducibility; response; Sampling; Scientist; screening; Sensitivity and Specificity; Small Business Innovation Research Grant; social; Spinal Puncture; Surface; tau Proteins; Techniques; Technology; Testing; therapy outcome; Thinness; Time; Translating; United States; Validation; Work