data. Unfortunately, these results were derived by using data from only 2 months in the entire sampling period, even though the 2 monthsselected seem to be particularly significant. Critics have pointed out that the estimates for a, and @, which turned out to be 0.11 and 2.4 respectively, vary quite widely according to the particular 2 months picked for solution. In any case, 1f one has feelings, subjective or otherwise, about the relative effects of different months, country. Harris and co-workers (2) have introduced an empirical model for short-lived radionuclides which includes the effects of barn feeding. In predicting future milk levels, Kulp (3) has used the same general model as Knapp with different time periods. In his formulation 2, refers to the cumulative deposit of strontium 90 measured at the midpoint of the growing season and w, is the average rate of deposition per 6 monthsof a particular growing season. In this case, only 5 years of data yielding five points can be used to estimate the 2 parameters a, and a, Thus, it is not surprising that a predicted level should agree with an observed level no matter what the true relationship or estimation procedure should happen to be. In fact, in- creasing the number of parameters to 5 would lead to a perfect fit regardless of the input vari- tifact due to letting the cows out to pasture before the second peak. The preceding statements indicate a need for developing meaningful prediction models which apply not only to average U.S. levels over a yearly period but to specific area values which may prevail during particular time periods. Strontium 90 Levels in Pasture Feed Considerfirst the concept of “pasture level,” which is defined as the concentration of stron- tium 90 per kilogram of dry feed taken from that pasture by grazing. This net level of strontium 90 in the pasture is dependent largely on the following factors: 1. Rate of deposition expressed in millicuries per square mile per month. 2. Net rate of gain from other pasture areas expressed in micromicrocuries per kilogram per menth. 3. Net rate of absorption from soil expressed in micromicrocuries per kilogram per month. 4, Net rate of loss by washingoff of strontium 90 particulates and grazing depletion of pasture grasses expressed in micromicrocuries per kilogram per month. We mayrepresent the pasture condition schematically as in figure 1. “ pie28 Lf WASHOFF a. os ane GRAZING DEPLETION = RU YY , & AAMAL/ADIA x Y , 1, oy» t ij 5 dat PASTURE Ayrndd, ones x 2 ett DONQ ae: Fe ae +‘ weighted least squares is the appropriate estimation technique. Knapp’s figures are about 30 percent too low during a period of about 9 months (October 1959 to July 1960), an anomaly which he attributes to winter barn feeding of cows in northern areas of the ables. If one looks critically at these basic models, one is inclined to wonder why the milk levels should be related to the previous 1-month, 6-month, or any other period of deposition, and if so, why linearly. Harris (2) has pointed out that the apparent lag time from spring deposition peaks to milk level peaks is probably an ar- Figure 1. 1056 Schematic representation of strontium 90 movement The milk level is the result of sampling from the dairies in the milkshed and represents average transport factors which might prevail over a large numberof farmsas a whole, butnot on any farm in particular. We would not expect as large an area as a county to have an appreciable net gain or netloss of strontium 90 particulates from other pasture areas. Thus. this factor is neglected in figure 1. In making computations average gain andloss factors will be used which will undoubtedly vary from farm to farm or from pasture to pasture. This. again, is justified by the observation that milk Public Health Reports

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