Since you're using gensim, you should probably use it's doc2vec implementation. doc2vec is an extension of word2vec to the phrase-, sentence-, and document-level. It's a pretty simple extension, described here
Gensim is nice because it's intuitive, fast, and flexible. What's great is that you can grab the pretrained word embeddings from the official word2vec page and the syn0 layer of gensim's Doc2Vec model is exposed so that you can seed the word embeddings with these high quality vectors!
GoogleNews-vectors-negative300.bin.gz (as linked in Google Code)
I think gensim is definitely the easiest (and so far for me, the best) tool for embedding a sentence in a vector space.
There exist other sentence-to-vector techniques than the one proposed in Le & Mikolov's paper above. Socher and Manning from Stanford are certainly two of the most famous researchers working in this area. Their work has been based on the principle of compositionally - semantics of the sentence come from:
1. semantics of the words
2. rules for how these words interact and combine into phrases
They've proposed a few such models (getting increasingly more complex) for how to use compositionality to build sentence-level representations.
2011 - unfolding recursive autoencoder (very comparatively simple. start here if interested)
2012 - matrix-vector neural network
2013 - neural tensor network
2015 - Tree LSTM
his papers are all available at socher.org. Some of these models are available, but I'd still recommend gensim's doc2vec. For one, the 2011 URAE isn't particularly powerful. In addition, it comes pretrained with weights suited for paraphrasing news-y data. The code he provides does not allow you to retrain the network. You also can't swap in different word vectors, so you're stuck with 2011's pre-word2vec embeddings from Turian. These vectors are certainly not on the level of word2vec's or GloVe's.
Haven't worked with the Tree LSTM yet, but it seems very promising!
tl;dr Yeah, use gensim's doc2vec. But other methods do exist!