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Electronic Health Records Implementation

01 Electronic Health Records Implementation · 16 edit slice
5
orgs
16
activities
3
strategies
AZ
epicenter
the opening take
This slice touches 5 organizations and 16 activities — UNIVERSITY HEALTHCARE ALLIANCE, FAMILY HEALTHCARE NETWORK, ARIZONA HEALTH INFORMATION NETWORK, OAK CREEK WATER CO NO 1 and others. Activity concentrates in Arizona (60%) and California (40%). The field's most common shared approach is "Flexible Fee Initiation", run by 1 orgs.
UNIVERSITY HEALTHCARE ALLIANCE and FAMILY HEALTHCARE NETWORK hold roughly a third of all activity — know those first.
pull-quote · for funders
who to look at first

shortlist

Ranked by activity breadth, method diversity, and network reach across the slice. Attach a memo to this report and this list re-ranks around your intent.

where this slice is thin

gap signals

Concrete structural gaps — method mix, geographic concentration, coalition density, funder diversity. Evidence is cited from the slice's own numbers.

where the field lives · works

geography

Orange headquarters dots are sized by how many grantees are based in the state. Green circles mark real locations these orgs say they serve — from city-level populations in this slice's impact_map_populations data. Toggle layers at the bottom right.

regional breakdown · hq density
Arizona 60% · 3 orgs
California 40% · 2 orgs
who's here

organizations in this field · 5

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direct service advocacy research capacity building
where the money comes from

funders already active in this field

Funders named as a funding source on these orgs' own materials. The count is the number of orgs in this slice that cite them — higher means a funder with demonstrable commitment to the field.

Centers for Medicare & Medicaid Services (CMS) 1
Government
Health Resources and Services Administration (HRSA) 1
Government
NSF 1
Government
USDA 1
Government
how the field thinks

strategies in this slice

Theories of action extracted from the orgs in this slice. The count is how many orgs cite each one — a strategy run by many orgs in common is a through-line; one cited by a single org is still surfaced so the reader can gauge the full spread.

where strategy meets practice

strategies × activity types

How each shared strategy breaks down across the four activity types the orgs running it actually do.

direct service
advocacy
research
capacity building
Flexible Fee Initiation
1
Single Sign-On Access
2
Special District Transition
1
who works with whom

named partnerships · coalitions · networks

Entities these orgs explicitly call out as partners, coalition members, or networks. Unlike the strategy-sharing graph below (which is inferred from shared approaches), these are relationships the orgs claim on their own sites.

A.T. Still University Partner
shared by 1 org
Affinity Medical Group Partner
shared by 1 org
Apple Partner
shared by 1 org
Arizona Area Health Education Centers (AzAHEC) Partner
shared by 1 org
Arizona Corporation Commission Government
shared by 1 org
Arizona Health Sciences Library Partner
shared by 1 org
Avec Eye Center Partner
shared by 1 org
Banner Health Partner
shared by 1 org
Ben Collins, O.D. Partner
shared by 1 org
Centers for Medicare & Medicaid Services Government
shared by 1 org
Centers for Medicare & Medicaid Services (CMS) Government
shared by 1 org
Chanae Landeen Partner
shared by 1 org
Collin Gray, O.D. Partner
shared by 1 org
Commission on Dental Accreditation Government
shared by 1 org
Common Spirit Partner
shared by 1 org
Council on Medical Education Partner
shared by 1 org
where the field connects

strategy-sharing network

Inferred from shared theories of action: each line connects an org to a strategy it runs. Organizations that share many strategies cluster through the same nodes — funders can spot the field's structural bridges.

scale of the field

rollup metrics

Aggregated scale claims from orgs in the slice. Treat as a floor, not a ceiling — many orgs don't publish these numbers, so totals underrepresent real reach. Extreme outliers (often unit-mismatches upstream) are filtered out.

1K
Staff
from 2 orgs