at that point i assume you ran the following script:
 
 
Fit Model(
    Y( :Residual Runtime ),
    Effects(
        :Age,
        :Weight,
        :age2,
        :weight2,
        :Age * :Weight,
        :Age * :age2,
        :Age * :weight2,
        :Weight * :age2,
        :Weight * :weight2,
        :age2 * :weight2
    ),
    Personality( Standard Least Squares ),
    Emphasis( Effect Screening ),
    Run(
        Profiler(
            1,
            Confidence Intervals( 1 ),
            Term Value(
                Age( 47.677 ),
                Weight( 77.445 ),
                age2( 2299.9 ),
                weight2( 6064.8 )
            )
        ),
        :Residual Runtime << {Lack of Fit( 0 ), Sorted Estimates( 1 ),
        Plot Actual by Predicted( 1 ), Plot Regression( 0 ),
        Plot Residual by Predicted( 0 ), Plot Effect Leverage( 0 )}
    )
);
 
 
then you got R2 of 0.377547
 
at this stage I would just take that number multiply it by sample size 31 and get LM=n*R2, LM=31*0.377547=11.70396.
the Pvalue of this number can be obtained with the following script in jmp:
 
 
New Table( "Pvalue",
    Add Rows( 1 ),
    New Column( "P>chiSq", Numeric, Continuous, Format( "Best", 12 ), Formula( 1 - ChiSquare Distribution( 11.703957, 10 ) ))
);
 
 
this will give you the value of 0.3 so you can be quite sure the original model didn't suffer from heteroscedasticity.
hope it helped.