Pick one device tonight. Same time of day, same prep, no alcohol the night before. Use that one only for the next three months. Stop comparing across tools.
Three thermometers in the same room can read 68, 71, and 72 degrees, and all three are working correctly. They just disagree on the calibration. Pick one, leave it on the wall, and watch how the room changes over a week. Move it to a different shelf and you have started a new measurement, not continued the old one.
HIGH for the overall accuracy hierarchy and the systematic direction of method-specific bias. HIGH for the principle that for individual tracking, repeat-with-same-device beats chasing accuracy. MODERATE for segmental phase-sensitive multi-frequency BIA approaching DXA accuracy in clinic settings. LOW for consumer home BIA scales as individual-level partitioning instruments for weekly change.
Tired of three machines telling you three different body-fat numbers? Get the science behind what actually moves the needle, weekly.
Join The Verdict — free"DXA is the gold standard, scales are garbage, and I should chase the most accurate method I can afford." Or the inverse: "My smart scale says 18% so I'm 18%."
Both miss the point. The hierarchy is real, but switching methods to chase a number, or trusting any single reading from any device, destroys whatever signal you were trying to measure.
The accuracy hierarchy is well-established and stable for thirty years STRONGHIGH: 4-compartment lab model ≈ DXA > BodPod > segmental multi-frequency clinical BIA > skinfolds with skilled tester / ultrasound > consumer single-frequency BIA scales > BMI. Cross-method differences on the same person can hit 9 percentage points BF (Frisard 2005, N=56).
Each method is biased in its own direction and the bias is systematic STRONGHIGH. Tetrapolar BIA underestimates BF in healthy adults; BodPod with the Siri equation overestimates BF in heavier subjects; InBody devices systematically underestimate BF% and overestimate fat-free mass vs DXA (McLester 2020, N=67); consumer scales typically read low.
Even DXA differs across brands STRONGHIGH. Hologic, Lunar, and Norland scanners gave mean BF% differences of 2.6 to 6.3% on the same subjects (Tothill 1994). Same brand, same software, same machine over time = excellent precision. Different brand or different machine = the comparison is broken.
For tracking change in one person, precision matters more than absolute accuracy STRONGHIGH. BodPod test-retest is 0.8% BF (Collins 2003). DXA same-machine is roughly ±1.5%. InBody minimum detectable difference is 2.1 to 2.7%. Home BIA scales are 4 to 8%.
Population-specific algorithm bias is the invisible failure mode MODERATEMODERATE. A Chinese person on a Western-derived BIA equation, a 65-year-old on a young-adult algorithm, a bodybuilder on a population-mean BodPod equation — the reading looks plausible and is systematically wrong by several percentage points (Bosy-Westphal 2017; Fang 2020; Liu 2022).
Consumer home BIA scales have noise larger than most real weekly composition changes STRONGHIGH. A real person losing fat at 0.5–1% body weight per week is changing body fat by maybe 0.2–0.4 percentage points per week. The home scale's day-to-day noise dwarfs that signal. Trend tool only.
How strong is the evidence for the claims in this review? Higher = more confidence the claims are supported. This does not measure how large the effect is or how important it is compared with other levers.
Conviction-scored health research in your inbox. What works, what doesn't, and what the studies actually measured.
Subscribe freeConviction-scored verdicts on supplements, nutrition, training, physio, and recovery.