Start HereServicesCalculatorCase StudiesResourcesFAQBook Free Consultation
Service

SPSS Analysis, explained clearly

SPSS is powerful but unforgiving. We help you set up your data correctly, run the right procedures, check the assumptions, and read the output so you can explain every table with confidence — in your thesis and in your viva.

Book Free Consultation WhatsApp an Expert

SPSS remains the workhorse of medical and health-sciences research, and for good reason: it handles most study designs, produces familiar output, and is what most examiners expect to see. But a valid SPSS analysis needs far more than clicking through menus until a table appears. It needs correctly coded variables, the right procedure for your design, assumptions that have actually been tested, and a correct reading of an output window that is dense with numbers, many of which you do not need. We provide all four.

Just as importantly, we help you understand the workflow. Many clients do not simply want results handed back — they want to be able to reproduce and defend the analysis themselves. We can annotate every step so your SPSS work is transparent and repeatable, which matters both for your viva and for your next study.

What’s included

  • Data structuring and coding — defining variable types, value labels, and measurement levels so SPSS treats your data correctly
  • Data cleaning — identifying out-of-range values, inconsistent entries, and missing data, with a defensible handling strategy
  • Assumption testing — normality (Shapiro–Wilk, Q–Q plots), homogeneity of variance (Levene’s test), and multicollinearity checks
  • Descriptive and inferential procedures matched to your design, from cross-tabs to mixed models
  • Regression — linear, binary and multinomial logistic, with diagnostics
  • Reliability and scale analysis — Cronbach’s alpha, item-total statistics, and exploratory factor analysis
  • ROC analysis for diagnostic and cut-off studies
  • Publication-ready output — tables and charts exported and formatted to your journal or thesis style

Reading the output correctly

An SPSS output window can run to dozens of tables, and knowing which numbers matter is half the skill. We interpret the ones that count — the test statistic and its exact p-value, the effect size and its confidence interval, and the assumption checks that tell you whether the result can be trusted — and we ignore the noise. You receive a written explanation of each key table so that when your supervisor points at a figure and asks “what does this mean?”, you have a clear answer.

Prefer R or GraphPad Prism? We work in those too, and can translate an SPSS workflow into reproducible R code if your journal, supervisor, or reviewers prefer a script-based approach.

Learn as we go

If you want to build your own SPSS skills, we can work in a teaching mode: screenshots or notes of each step, an explanation of why a particular menu and option were chosen, and a short guide to reproducing the analysis. This is especially valuable for PhD scholars who will defend the analysis in a viva and may need to re-run it after examiner feedback.

Common SPSS pitfalls we prevent

  • Coding a categorical variable as a number and analysing it as continuous
  • Missing values silently dropping cases and shrinking the effective sample
  • Choosing a parametric test when the normality assumption clearly fails
  • Reading the wrong row of the output table (for example, ignoring Levene’s test when interpreting a t-test)
  • Reporting only a p-value with no effect size, confidence interval, or sample size

Reporting to journal standard

We report results following CONSORT for trials, STROBE for observational studies, or your target journal’s guidelines, with exact statistics rather than vague summaries. Tables are formatted so they can be pasted straight into your manuscript, and figures are exported at the resolution journals require.

How to get started

Share your SPSS file (or your raw data in Excel) along with your research questions and any supervisor requirements. We confirm the design, check the coding and assumptions, run the analysis, and return interpreted, publication-ready output — usually with a short call to walk you through it.

FAQ

Common questions

Can you work with my existing SPSS file? +
Yes. Send us your .sav file (or your data in Excel) and we will check the variable coding and measurement levels before analysing, since incorrect coding is the most common source of wrong results.
Will you explain the output so I can defend it in my viva? +
Yes — that is central to how we work. You will receive a plain-language interpretation of each key table, and we can annotate the steps so you can reproduce the analysis yourself.
Do you follow reporting guidelines? +
Yes, including CONSORT for randomised trials and STROBE for observational studies, plus any journal-specific formatting your target requires.
What if my data has a lot of missing values? +
We assess the pattern and amount of missingness and recommend a defensible approach — from complete-case analysis to appropriate imputation — and document the rationale.
Can you also do R or GraphPad? +
Yes. We can run the analysis in R or GraphPad Prism instead, or translate an SPSS workflow into reproducible R code.
How can I help you?