Маркетинговые исследования
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With the inference function defined as above, we can create a prediction for th

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 With the inference function defined as above, we can create a prediction for th Empty With the inference function defined as above, we can create a prediction for th

Сообщение  jy9202 Пт Июл 04, 2014 2:23 pm

The inferences are of negligible computation cost, but for a reasonable n, the number of necessary inferences can become prohibitive as the TIM is exponential in size. We assume that generat ing the complete TIM is computationally infeasible within the desired time frame to develop treatment strategies for new patients. Thus, we fix a maximum size AP24534 Ponatinib for the number of targets in each target combination to limit the number of required inference steps. Let this maximum number of targets considered be M. We then consider all non experimental sensitivity com binations with fewer than M 1 targets. As we want to generate a Boolean equation, we have to binarize the resulting inferred sensitivities to test whether or not a tar get combination is effective.<br><br> We denote the binarization threshold for inferred sensitivity values, an effective combination becomes more restric tive, and the resulting boolean equations will have fewer effective terms. There is AT-406 分子量 mw an equivalent term for target combinations with experimental sensitivity, denoted θe. We begin with the target combinations with experimen tal sensitivities. For converting the target combinations with experimental sensitivity, we binarize those target combinations, regardless of the number of targets, where the sensitivity is greater than θe. The terms that represent a successful treatment are added to the Boolean equation. Furthermore, the terms that have sufficient sensitivity can be verified against the drug representation data to reduce the error. To find the terms of the network Boolean equation, we begin with all possible target combinations of size 1.<br><br> If the sensitivity AKT 阻害剤 of these single targets are suf ficient relative to θi and θe, the target is binarized, any further addition of targets will only improve the sensitivity as per rule 3. Thus, we can consider this target completed with respect to the equation, as we have created the mini mal term in the equation for the target. If the target is not binarized at that level, we expand it by including all pos sible combinations of two targets including the target in focus. We continue expanding this method, cutting search threads once the binarization threshold has been reached. The method essentially resembles a breadth or depth first search routine over n branches to a maximum depth of M. This routine has time complexity of O, and will select the minimal terms in the Boolean equation.<br><br> The D term results from the cost of a single inference. The time complexity of this method is significantly lower than generation of the complete TIM and optimizing the resulting TIM to a minimal Boolean equation. For the minimal Boolean equation generation algorithm shown in algorithm 2, let the function binary return the binary equivalent of x given the number of targets in T, and let sensitivity return the sensitivity of the inhibition combination x for the target set T. With the minimal Boolean equation created using Algorithm 2, the terms can be appropriately grouped to generate an equivalent and more appealing mini mal equation. To convey the minimal Boolean equation to clinicians and researchers unfamiliar with Boolean equations, we utilize a convenient circuit representation, as in Figures 2 and 3.

jy9202

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