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bbSCITE

Welcome to bbSCITE. bbSCITE (short for "bit-based SCITE") is an FPGA-accelerated implementation of the SCITE software package to compute mutation histories of somatic cells. Given noisy mutation profiles of single cells, bbSCITE performs a stochastic search to find the Maximum Likelihood (ML) tree. Tree reconstruction can be combined with an estimation of the error rates in the mutation profiles.

The SCITE algorithm is particularly designed for reconstructing mutation histories of tumors based on mutation profiles obtained from single-cell exome sequencing experiments, but is in principle applicable to any type of (noisy) mutation profiles for which the infinite sites assumption can be made.

This implementation has been developed as part of the Bachelor's Thesis "Accelerating Single-Cell Inference of Tumor Evolution with FPGAs" by Jan-Oliver Opdenhövel and the research paper "Mutation Tree Reconstruction of Tumor Cells on FPGAs Using a Bit-Level Matrix Representation" by Jan-Oliver Opdenhövel, Christian Plessl, and Tobias Kenter. It provids an implementation of the same algorithm as SCITE with a higher throughput while maintaining the solution quality. The LaTeX code of the thesis is found in docs/thesis/thesis.tex and it can be built using a full TeX-Live installation. The research paper is found in docs/paper.pdf.

bbSCITE is open source software and available under the GPL3 license.

Citation:

Jan-Oliver Opdenhövel, Christian Plessl, and Tobias Kenter. 2023. Mutation Tree Reconstruction of Tumor Cells on FPGAs Using a Bit-Level Matrix Representation. In The International Symposium on Highly Efficient Accelerators and Reconfigurable Technologies 2023 (HEART 2023), June 14–16, 2023, Kusatsu, Japan. ACM, New York, NY, USA, 8 pages. https://doi.org/10.1145/3597031.3597050

Building

bbSCITE is written in Data Parallel C++ using Intel oneAPI, targeting Intel datacenter FPGAs like the Stratix 10 family. Additionally, both the tests and the application use certain Boost libraries as well as CMake. The exact software requirements are:

  • Intel oneAPI Base Toolkit, version 22.3.0
  • Intel FPGA Add-on for oneAPI Base Toolkit, together with the BSP for your FPGA board
  • Boost, version 1.81.0
  • CMake, version 3.23.1

On the Noctua 2 supercomputer, the required modules to target the Bittware 520N cards can be loaded with the command

module load fpga devel intel/oneapi/22.3.0 bittware/520n Boost CMake

Since bbSCITE is managed by CMake, you need to configure the build directory before building:

mkdir build
cd build
cmake -DCMAKE_BUILD_TYPE=Release ..

Emuation & Hardware

There are two variants of bbSCITE available that accept different maximum input sizes. bbSCITE64 accepts up to 63 genes and 64 cells, and bbSCITE96 theoretically accepts up to 95 genes and 96 cells. However, there are known issues when using full input sizes for bbSCITE96, so it is encouraged to use only up to 94 genes and 95 cells for bbSCITE96.

The emulation executables for the two designs can be build with the commands

make bbSCITE64_emu
make bbSCITE96_emu

The synthesis reports can be generated with the commands

make bbSCITE64_report
make bbSCITE96_report

and the final FPGA hardware image can be built with the commands

make bbSCITE64
make bbSCITE96

Note however that building the hardware images can require up to a day of raw computation time and up to 100GB of main memory.

Unit Tests

There are also unit tests available that test the individual components of the application. These can be built and run using the commands

make unit_test -j$(nproc)
./test/unit_test

Using bbSCITE

bbSCITE is CLI-compatible with SCITE and SCITE's readme page is applicable in most cases. The most common and required arguments are:

  • -i <input file>: Use this input file. An input file is a CSV file with spaces as separators and entries in {0,1,2,3}. There is a row for every gene and a column for every cell, and an entry encodes whether a certain cell has a certain mutation at this gene or not. 0 encodes that a mutation is not present, 1 encodes that a (heterozygous) mutation is present, 2 encodes that a (homozygous) mutation present, and a 3 encodes that the mutation state of this cell at this gene is unknown.
  • -r <no of chain>: Simulate the given number of monte carlo chains.
  • -l <no of chain steps>: Execute the given number of chain steps for every chain.
  • -fd <prob>: Assume that false positives (a mutation is reported that does not exist) occur with the given probability.
  • -ad <prob>: Assume that false negatives (a mutation is not reported that does exist) occur with the given probability.

This means that an invocation of bbSCITE96 may look like this:

./build/src/bbSCITE96 -i SCITE/dataHou18.csv -r 1 -l 900000 -fd 6.04e-5 -ad 0.4309

bbSCITE will then load the the given input and execute the requested number of chains and steps to find the most likely mutation trees. The found trees are then written to files prefixed by the name of the input file. However, there are some differences between bbSCITE and SCITE, as well as some unsupported features:

  • The chip design of bbSCITE always processes a certain group of chains at once to fully occupy the computation pipeline. The total number of chains that bbSCITE processes must therefore always be a multiple of this group size. bbSCITE automatically increases the number of chains as necessary.
  • bbSCITE reads the number of cells and genes from the input file. It therefore always assumes that the dataset contains as many genes as there are rows and that there are as many cells as columns. The parameters -n and -m are therefore ignored.
  • bbSCITE does not distinguish between heterozygous and homozygous mutations. Heterozygous and homozygous mutations are simply treated as mutations and are internally converted.
  • Maximum aposterori (MAP) scoring is not (yet) supported. The parameter -s is therefore ignored.
  • Attaching cells to the output trees is not (yet) supported. The parameter -a is therefore ignored.
  • Sampling from the posterior distribution is not (yet) supported. The parameter -p is therefore ignored.
  • Naming the mutations in the output trees is not (yet) supported. The parameter -names is therefore ignored.
  • Setting the seed of the random number generators is not (yet) supported. The parameter -seed is therefore ignored.
  • bbSCITE always collects the highest-scoring trees. The parameter -no_tree_list is therefore ignored.
  • bbSCITE only works with mutation trees. Using binary leaf-labelled trees is therefore not supported and the parameter -transpose is ignored.

Performance and Quality benchmarks

The following section describes the execution of the performance and quality benchmarks. First of all, all scripts assume that a valid bbSCITE binary found under the path build/src/bbSCITE(64|96) and that a valid SCITE binary is found under the path build/scite.

The performance benchmark is prepared and submitted as follows:

./scripts/performance_benchmark/generate_inputs.sh # Prepare the input data, should be run on a login node
./scripts/performance_benchmark/ffscite.sh # This should be run on an FPGA node
./scripts/performance_benchmark/scite.sh # This may be run on any node

This creates the output directory performance_benchmark.out with different inputs and submits the execution jobs to the workload manager: One for the FPGA-based bbSCITE and one for the single-threaded SCITE. After these jobs are finished, the outputs can be analyzed with the verification tool:

./tool.py perftable # Print a markdown table with performance data

The quality benchmark works similarly. Preparation and submission is done with the following commands:

./scripts/quality_benchmark/generate_inputs.sh
sbatch scripts/quality_benchmark/ffscite.sh
sbatch scripts/quality_benchmark/scite.sh

Once these jobs are completed, the results can be retrieved with the following command:

./tool.py tost # Execute the "Two One-Sided t-Tests" procedure on the sampled quality data.

Performance proxy

The original SCITE application does not fully utilize the available CPU computation power. However, we wanted to get an estimate how bbSCITE would compare to a fully optimized CPU version of SCITE. We therefore implemented an optimized performance proxy that only computes likelihood scores. It can be built with the command

make cpu_scoring_benchmark

Note that the CMake build system accepts the PC2_SYSTEM argument to target the two supercomputers Noctua 1 and 2 at the Paderborn Center for Parallel Computing. For example, the command

cmake -DCMAKE_BUILD_TYPE=Release -DPC2_SYSTEM=Noctua2 ..

configures the build system to use the benchmark version that is optimized for the AVX-2 processors for Noctua 2.