SBIR-STTR Award

Understanding Barriers to Healthcare Delivery through Modeling of Maternity Healthcare Delivery in Kenya
Award last edited on: 1/4/2021

Sponsored Program
SBIR
Awarding Agency
DOD : AF
Total Award Amount
$1,634,926
Award Phase
2
Solicitation Topic Code
AF131-051
Principal Investigator
Alper K Caglayan

Company Information

Milcord LLC

303 Wyman Street Suite 300
Waltham, MA 02451
   (781) 839-7138
   info@milcord.com
   www.milcord.com
Location: Multiple
Congr. District: 05
County: Middlesex

Phase I

Contract Number: ----------
Start Date: ----    Completed: ----
Phase I year
2013
Phase I Amount
$149,999
In the current security environment, violent extremist organizations are comprised of global networks of loosely connected cells marked by centralized decision making but decentralized execution of operations, where individuals are increasingly adept at leveraging various forms of communication, transaction mechanisms, and travel patterns in support of malicious agendas. Within these multiple layers of information, intelligence analysts require a capability to detect and resolve conflicting, inconsistent, suspicious, and deceptive data, reducing the uncertainty in analysis associated with misinformation. In response, we are proposing to develop semSCI, a Semantic Application to Detect and Resolve Suspicious and Conflicting Information that enables analysts to combine diverse sources of structured and semi-structured information within a common schema to automatically tag entities and relationships, including metadata about provenance such as timeliness and reliability. semSCI will represent the asserted facts in the structured and semi-structured information using a semantic annotation formalism to create a knowledge graph data model. Leveraging this knowledge graph, semSCI can infer not only spatial, temporal, and naming conflicts but any inconsistency indicating suspicious and deceptive information involving the logical expressions of subject and property values in the multi-dimensional semantic space with the use of stream entropy algorithms.

Benefit:
This project will result in the development of software products for the data management for intelligence market, supporting the integration of semi-structured and structured data from a variety of sources to include highly technical data formats for the purposes of identifying suspicious, conflicting, deceptive, and inconsistent information. Given the difficult budget climate, DoD is leaning toward multi-purpose technologies that fuse various collection disciplines and standardize reporting. semSCI is directly in line with this focus, as our DL based solution can fuse various data formats by incorporating the underlying semantics of the data into the ontology. In alignment with DoD strategy, semSCI will focus on special operations, as well as intelligence, surveillance and reconnaissance equipment, unmanned systems, space systems and cyberspace tools. There is considerable commercial opportunity in applying this technology to the homeland security context as well, whereby users would be filtering incoming sensor feeds such as social media artifacts, data from national and local government organizations, and weather information for building a common operating picture to respond to natural disasters and unconventional threats. Detecting conflicting, suspicious, deceptive and inconsistent data within these multiple layers, especially within social media, could be critical for first responders and policymakers in responding to a crisis. In the enterprise segment, we intend to commercialize the proposed technology by developing a cyber intelligence service, whereby the solution would fuse various types of cyber data to a common ontology and detect inconsistencies, and conflicting, suspicious, and deceptive data.

Phase II

Contract Number: ----------
Start Date: ----    Completed: ----
Phase II year
2017
Phase II Amount
$1,484,927
The challenge of improving maternal healthcare outcomes in Kenya requires an approach that comprehensively acquires and represents knowledge related to the public healthcare landscape, placing observed data and outcomes in context to determine why women are not receiving the care that is available to them. Without the ability to structure and connect various data, capabilities are limited in their ability to express meaningful links between the times, places, and context that may be key to understanding the processes that influence maternal health outcomes. To address these challenges, we propose to develop and demonstrate the feasibility of an integrated public health data lake and knowledge graph decision support system. The combination of a scalable storage repository that manages large streams of heterogeneous data and a metadata knowledge graph that enables structured direct and contextual data representation will provide a platform for generating key insights for understanding maternal healthcare population segmentation, and drive future insights that can inform recommendations to providers for improving maternal health outcomes. By combining the strengths and expertise of Orsalus, IST Research, and Milcord, we have the capability to build a proof of concept in a real-world operating environment and demonstrate the value of this approach.