ObsMinds · Observational Research — a specialized subdomain of RSMinds
Design Rigorous Observational Studies
From Idea to STROBE Synopsis
Cohort, case-control, cross-sectional, and ecological designs. 11-step workflow with a confounding-adjustment check — AI proposes the design, a deterministic DAG analysis catches Simpson's-paradox traps before you commit. Built on STROBE, RECORD, and TRIPOD.
observational subtypes covered
workflow sections — idea to STROBE synopsis
reporting standards: STROBE, RECORD, TRIPOD, MOOSE…
starts here · 7-day money back
How ObsMinds works
The 11-section workflow
Each section is its own AI-assisted accordion. Outputs flow forward — your PECO informs matching; matching informs sample size; confounders thread through analysis; everything assembles into a STROBE synopsis.
Idea & Obs Subtype
Inputs
AI action
Output
Best-fit subtype across 20 observational designs with alternatives + category (Cohort / Case-Control / Cross-sectional / Special).
PECO Framework
Inputs
AI action
Output
Population / Exposure / Comparator / Outcome — with source population and follow-up window for cohort designs.
Research Question & FINER
Inputs
AI action
Output
3 question drafts + FINER scoring (Feasibility, Interest, Novelty, Ethics, Relevance).
Hypothesis & Variables
Inputs
AI action
Output
Exposure–outcome H1 / H0 + variables: predictor, outcome, confounders, effect modifiers, mediators.
Theory & Framework
Inputs
AI action
Output
3 theory candidates with citations + conceptual framework / DAG-style diagram.
Population & Eligibility
Inputs
AI action
Output
Source population, inclusion / exclusion criteria, recruitment sources, attrition assumptions.
Sampling & Matching Strategy
Inputs
AI action
Output
Comparator selection, matching variables, propensity-score plan, bias-control checklist for case-control & cohort.
Sample Size & Power
Inputs
AI action
Output
N cases + controls (or cohort N) with incidence-rate or odds-ratio assumptions and confounder-adjustment inflation.
Exposure & Outcome Measurement
Inputs
AI action
Output
Ascertainment methods, timing, instruments, and misclassification controls for exposure and outcome.
Analysis Plan
Inputs
AI action
Output
Primary / secondary analyses, confounder-adjustment strategy (regression / matching / IPW), sensitivity analyses.
STROBE Synopsis
Inputs
AI action
Output
STROBE-compliant synopsis exportable as DOCX, PDF, or Markdown.
Subtype coverage
20 observational subtypes — all covered
From classic prospective cohorts to nested case-control and registry studies. Every subtype gets its own design guidance, STROBE extension mapping, and sample-size formulas.
Cohort
8 designsProspective Cohort
Forward follow-up — exposure today, outcomes later.
Retrospective Cohort
Historic records — exposure and outcome already happened.
Ambidirectional Cohort
Mixes historic baseline with forward follow-up.
Birth Cohort
Track individuals from birth across life stages.
Case-Cohort
Subcohort sample as comparator for incident cases.
Closed Cohort
Fixed membership — no new entries after baseline.
Dynamic Cohort
Open entry-exit — person-time accumulation.
Cohort Survey
Repeated measurement on the same cohort.
Case-Control
5 designsIncident Case-Control
New cases identified as they occur.
Prevalent Case-Control
Existing cases at a point in time.
Nested Case-Control
Cases & controls drawn from a parent cohort.
Case-Time Control
Subject as their own control across time windows.
Case-Only
No external controls — gene-environment focus.
Case Reports & Series
3 designsCase Report
Single instance — descriptive, hypothesis-generating.
Case Series
Several cases sharing exposure or outcome.
Case Study Research
In-depth qualitative case investigation.
Surveillance & Records
4 designsRecord Review
Retrospective chart abstraction.
Registry Study
Disease / device / exposure registries.
Surveillance Study
Ongoing population-level monitoring.
Cox Proportional Hazards
Time-to-event modelling design.
Compliance
Built on the observational
standards reviewers expect
Your protocol is scored against every applicable observational standard in real time.
Why this matters
Confounders,
caught before Simpson's paradox bites
Other tools
Generate a design. Hope for the best.
If the AI omits a key confounder — age in a smoking-mortality cohort, socio-economic status in a screening study — you won't notice until a reviewer asks why your unadjusted OR points the opposite way from your stratified analysis. Simpson's paradox in slow motion.
ObsMinds
AI proposes. DAG analysis cross-checks.
A deterministic confounder-coverage check inspects your variables against a directed acyclic graph for the chosen subtype. Missing common causes, colliders incorrectly adjusted for, and Simpson's-paradox risk are flagged with an explanation — before you submit.
- Deterministic DAG audit — not LLM-only opinion.
- Flags omitted common causes and improperly conditioned colliders.
- Stratified vs adjusted estimate sanity check.
AI confounder set
age, sex, BMI
3 covariates · proposed
DAG audit
+ SES, diet, exercise
3 missing common causes flagged
Final adjusted set
6 covariates
Simpson's-paradox risk: low
Plans
Simple pricing
Access 1m
15,000 Mindful AI Tokens
- All 20 observational subtypes
- 11-section workflow
- STROBE + RECORD exports
Access 2m
15,000 Mindful AI Tokens / month
- Everything in 1m
- Priority AI throughput
- Save ₹99 vs monthly
Access 3m
15,000 Mindful AI Tokens / month
- Everything in 2m
- Quarterly project cadence
- Save ₹198 vs monthly
FAQ
Frequently asked questions
Common questions from epidemiologists, supervisors, and IEC reviewers.
Which observational designs does ObsMinds cover?
All 20 mainstream subtypes — prospective, retrospective, ambidirectional and birth cohorts; case-cohort, dynamic and closed cohorts; nested, incident, prevalent, case-only and case-time control; case report, case series, case-study research; record review, registry, surveillance; and Cox proportional-hazards designs.
How is confounding handled differently from generic AI?
The AI proposes a confounder set; a deterministic DAG audit cross-checks against the design template for missing common causes and improperly adjusted colliders. Disagreements are flagged with an explainer before you commit to your analysis plan.
Will the synopsis pass STROBE peer review?
Output is structured to match all 22 STROBE items, with the appropriate extension (STROBE-NI / RDS / ME / AMS or RECORD) chosen by subtype. Formal compliance still requires investigator verification — every line stays editable.
Can I use ObsMinds for a registry or routinely-collected-data study?
Yes — RECORD is the default extension for registry and EHR-based work. The workflow asks for data-source provenance, code-list versioning, and missingness handling that RECORD reviewers expect.
How does PECO differ from PICO?
PECO swaps Intervention for Exposure. Observational studies don't assign exposure; they observe it. The tool guides you through source population, exposure ascertainment, and a credible comparator without inviting causal language reserved for RCTs.
Does the sample-size calculator work for case-control and cohort designs?
Yes — separate paths for cohort (incidence-rate, relative risk) and case-control (odds-ratio, matched / unmatched, with confounder-adjustment inflation). The verifier flags assumption mismatches before you lock the number.
Can I import an existing protocol or chart-review template?
Yes. Paste any synopsis or PECO statement and the tool extracts population, exposure, comparator, and outcome — including matching variables — so you continue from where you left off.
What about prediction-model studies?
Prediction-focused observational work uses the TRIPOD 2024 extension, with development / validation / update phases mapped to dedicated sections. Calibration and discrimination plans are part of the analysis-plan output.
What export formats are supported?
DOCX, PDF, and Markdown. All exports preserve STROBE structure and reporting headings for direct ethics-committee or journal submission.
Is there a free way to try it?
Subtype prediction (Step 1) is free with login — identify the right observational design for your idea. Full workflow is unlocked on any access plan, with a 7-day money-back guarantee.
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