Research & Data

Medical Secretaries: $23,875/yr in AI-Addressable Work (2026)

Jun 19, 2026

Here is a defensible, sourced answer to "what is the AI automation ROI for a medical secretary?" — assembled from sealed government and research data, not vibes. Every dollar and hour below maps to a specific cell in a snapshot we can reproduce on demand.

Headline: a medical secretary carries about 838 AI-addressable hours a year. At a loaded rate of $28.49/hour that is $23,875 of gross value; after a stated $12,000/year tooling budget, the Year-1 net is $11,875 per full-time employee.

Those numbers are a planning estimate built from defaults, not a quote. The three inputs — task hours, wage, and AI-addressable share — come from sealed public datasets; the three assumptions — a 2,080-hour work year, a 1.3× labor-loading multiplier, and the tooling budget — are stated in the open and adjustable in the calculator at the foot of this page. Change them and every figure recomputes.

Who this is for

Operations, finance, and HR leaders — and anyone building the business case for an AI assistant aimed at medical secretaries and administrative assistants. If you need a number you can defend in a budget meeting, with a citation behind every cell, this is built for you.

How much of a medical secretary's work is AI-addressable?

The Anthropic Economic Index puts this occupation's observed AI-exposure at 36.2% — the share of medical secretary task interactions in real Claude.ai usage that fell into an automation or augmentation pattern. Read it as "this is how people are already using AI here," not "this much of the job is automatable."

At the task level the picture is sharper. O*NET lists 15 distinct work tasks for this role. Of those, 4 have their own task-specific usage measurement in the Anthropic Economic Index; the remainder fall back to the occupation-level exposure above, and every row in the table below is labelled with which source it used (aei_task for a task's own data, aei_occ for the occupation fallback). We never silently mix the two.

For scale: BLS counts 830,760 people employed in this occupation nationally, at a mean wage of $45,580 a year. That wage is the spine of the dollar figures here.

The sealed task breakdown

Each row is one ONET task. Importance and Relevance are sealed ONET ratings; modeled hours allocates a 2,080-hour year across tasks in proportion to Importance×Relevance; AI-addressable share is the Anthropic Economic Index usage figure; hours saved and gross value follow from them. The table shows the 14 highest-value addressable tasks.

O*NET taskImportance (1–5)RelevanceModeled hrs/yrAI-addressable shareSourceHrs saved/yrGross value/yr
Complete insurance or other claim forms.4.573.9%13956.6%aei_task79$2,239
Answer telephones and direct calls to appropriate staff.4.64100%19436.2%aei_occ70$2,003
Compile and record medical charts, reports, or correspondence, using typewriter…4.5563.7%12156.2%aei_task68$1,943
Schedule and confirm patient diagnostic appointments, surgeries, or medical…4.5195.7%18136.2%aei_occ65$1,863
Transmit correspondence or medical records by mail, e-mail, or fax.4.4795.7%17936.2%aei_occ65$1,846
Operate office equipment, such as voice mail messaging systems, and use word…4.4191.6%16936.2%aei_occ61$1,741
Transcribe recorded messages or practitioners' diagnoses or recommendations into…4.641.5%8075.6%aei_task60$1,721
Receive and route messages or documents, such as laboratory results, to…4.4688.8%16636.2%aei_occ60$1,709
Greet visitors, ascertain purpose of visit, and direct them to appropriate staff.4.4886.3%16236.2%aei_occ59$1,667
Perform bookkeeping duties, such as credits or collections, preparing and…4.282.8%14536.2%aei_occ53$1,501
Interview patients to complete documents, case histories, or forms, such as…4.4476.1%14136.2%aei_occ51$1,459
Maintain medical records, technical library, or correspondence files.4.4673.7%13836.2%aei_occ50$1,419
Schedule tests or procedures for patients, such as lab work or x-rays, based on…4.2563.5%11336.2%aei_occ41$1,165
Perform various clerical or administrative functions, such as ordering and…3.668.3%10336.2%aei_occ37$1,060

Reading one row: the top task above is modeled at 139 hours/year; the Economic Index puts its AI-addressable share at 56.6%, so 79 hours are addressable, worth $2,239 at the loaded rate. Nothing is rounded up: hours saved is hours × share, full stop.

The ROI math, in full

No black box. Here is every step:

  1. Loaded hourly cost = (mean annual wage $45,580 ÷ 2,080 hours) × 1.3 loading = $28.49/hour. The 1.3× covers benefits, payroll tax, and overhead on top of base pay.

  2. Addressable hours saved = the sum of (task hours × AI-addressable share) across the role's addressable tasks = 838 hours/year.

  3. Gross annual value = 838 hours × $28.49 = $23,875/year.

  4. Net Year-1 ROI = $23,875 gross − $12,000 stated tooling budget = $11,875 per FTE.

The break-even point is worth stating plainly: this role's AI-addressable work is worth $23,875 a year at the loaded rate, so any tooling spend below $23,875 per FTE is net-positive on hours alone — before any quality, speed, or capacity upside.

Methodology and honest limitations

The single most important caveat: the Anthropic Economic Index measures observed Claude.ai usage patterns, not a theoretical "this much of the job can be automated." A high share means practitioners are already routing that task to AI; a low share can mean the task is hard to automate or simply that few people have tried. Treat these as a grounded default, then replace them with your own automatable share in the calculator — that is exactly what it is for.

The hour-allocation heuristic. O*NET does not publish hours per task, so we allocate the work year in proportion to each task's Importance×Relevance. It is a transparent, defensible split, not a stopwatch study; if you know your team spends disproportionate time on one task, the calculator lets you see the table and reason about it.

Why Importance×Relevance? O*NET rates each task on how important it is to the role and how relevant it is to a typical worker (the share who actually perform it). Multiplying the two ranks tasks by real time-pull — a high-importance task nearly everyone does outranks a niche one — which is precisely the weighting you want when dividing a fixed work-year. It is the most defensible allocation available short of a per-employer time study, and any row you disagree with is editable in the calculator below.

The wage is a national mean. BLS OEWS reports a $45,580 mean across all employers nationally (median $44,640). Your local, loaded cost may differ; set your own wage to localize the dollars.

What this is. A sourced, reproducible first estimate to start a buying conversation — not a guarantee of savings. The value of the method is that every input is sealed and checkable, so a skeptic can audit it rather than argue with a vendor's slide.

Sources

  • O*NET 30_3 — task statements and Importance/Relevance ratings. This page includes information from O*NET 30.3 Database by the U.S. Department of Labor, Employment and Training Administration (USDOL/ETA). Used under the CC BY 4.0 license. License: CC BY 4.0. Sealed snapshot 251d3df7766aa152, evidence 9e12c3890449ec21.

  • BLS OEWS May 2024 — occupational mean wage and employment. Source: U.S. Bureau of Labor Statistics, Occupational Employment and Wage Statistics (OEWS), May 2024. License: Public Domain (17 U.S.C. §105 — U.S. Government work). Sealed snapshot d032d178d7a95cdc, evidence 1237fd6700a000e9.

  • Anthropic Economic Index — observed AI task/occupation exposure (Claude.ai usage). Source: Anthropic Economic Index (https://huggingface.co/datasets/Anthropic/EconomicIndex), released under CC-BY. Reflects observed Claude.ai usage patterns, not a measure of theoretical automatability. Pinned to commit db51ecb12920, sealed snapshot c6870bb780772e4f, evidence 66b4254a97b1e852.

Every numeral on this page is reproducible from those three sealed snapshots by re-running our open model — there is no hand-entered or estimated figure in the tables or the math.

FAQ

Is "36.2% AI exposure" the share of the job AI will replace?
No. It is the share of measured Claude.ai task interactions for this occupation that showed an automation or augmentation pattern — an observed-usage signal, not a replacement forecast.

Where does the $45,580 wage come from?
BLS Occupational Employment and Wage Statistics, May 2024 — the national mean annual wage for this occupation, used verbatim from the sealed snapshot.

How do you get 838 hours saved?
For each addressable task we multiply its modeled annual hours by its AI-addressable share, then sum. Modeled hours allocate a 2,080-hour year by each task's O*NET Importance×Relevance.

Can I change the assumptions?
Yes — the calculator below this article lets you set the wage, the work-year hours, the labor-loading multiplier, the tooling budget, and each task's automatable share. The net ROI updates live.

Why these three data sources?
O*NET gives the tasks, BLS gives the labor cost, and the Anthropic Economic Index grounds "how much is AI-addressable" in real usage rather than a guess. Each is public and pinned to a sealed snapshot.

See these hours come off a real workflow

The math above is the business case; the next step is watching it run. USTA builds the agentic workflows that actually do this medical secretary work — drafting, routing, reconciling, and updating the systems of record — so the addressable hours above convert into capacity you keep instead of headcount you chase.

See how AI agents handle medical secretaries and administrative assistants → — or bring this page's numbers to a scoping call and we will pressure-test them against your actual task mix.

Same sealed O*NET + BLS + Anthropic Economic Index method, other roles:

Run your own numbers

The interactive calculator below loads this role's sealed task table. Adjust the wage, hours, loading, tooling budget, or any task's automatable share, and watch the net Year-1 ROI move. The defaults are the sourced figures above; the controls are yours.

Loading the interactive ROI calculator…

About the Author

Garrett Mullins
Garrett Mullins
Workflow Specialist

Helping businesses leverage automation for operational efficiency.

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