1#ifndef SCRAN_MARKERS_SUMMARIZE_COMPARISONS_HPP
2#define SCRAN_MARKERS_SUMMARIZE_COMPARISONS_HPP
12#include "tatami_stats/tatami_stats.hpp"
13#include "sanisizer/sanisizer.hpp"
15#include "quickstats/quickstats.hpp"
32template<
typename Stat_ =
double,
typename Rank_ =
int>
91template<
typename Stat_ =
double,
typename Rank_ =
int>
97 std::vector<Stat_>
min;
123 std::optional<std::vector<std::vector<Stat_> > >
quantiles;
137inline void validate_quantiles(
const std::optional<std::vector<double> >& probs) {
138 if (!probs.has_value()) {
142 const auto val = probs->front();
143 if (val < 0 || val > 1) {
144 throw std::runtime_error(
"quantile probabilities should be in [0, 1]");
147 const auto nprobs = probs->size();
148 for (I<
decltype(nprobs)> i = 1; i < nprobs; ++i) {
149 const auto val = (*probs)[i];
150 if (val < 0 || val > 1) {
151 throw std::runtime_error(
"quantile probabilities should be in [0, 1]");
153 if (val < (*probs)[i - 1]) {
154 throw std::runtime_error(
"quantile probabilities should be sorted");
159template<
typename Stat_>
160using MaybeMultipleQuantiles = std::optional<quickstats::MultipleQuantilesVariableNumber<Stat_, std::size_t, const std::vector<double>*> >;
162template<
typename Stat_>
163MaybeMultipleQuantiles<Stat_> setup_multiple_quantiles(
const std::optional<std::vector<double> >& requested,
const std::size_t ngroups) {
164 MaybeMultipleQuantiles<Stat_> output;
165 if (requested.has_value()) {
166 output.emplace(ngroups, &(*requested));
171template<
typename Stat_,
typename Gene_,
typename Rank_>
172void summarize_comparisons(
173 const std::size_t ngroups,
174 const Stat_*
const effects,
175 const std::size_t group,
177 const SummaryBuffers<Stat_, Rank_>& output,
178 MaybeMultipleQuantiles<Stat_>& quantile_calculators,
179 std::vector<Stat_>& buffer
182 std::size_t ncomps = 0;
183 for (I<
decltype(ngroups)> r = 0; r < ngroups; ++r) {
184 if (r == group || std::isnan(effects[r])) {
187 buffer[ncomps] = effects[r];
192 Stat_ val = (ncomps == 0 ? std::numeric_limits<Stat_>::quiet_NaN() : buffer[0]);
194 output.min[gene] = val;
197 output.mean[gene] = val;
200 output.max[gene] = val;
203 output.median[gene] = val;
205 if (output.quantiles.has_value()) {
206 for (const auto& quan : *(output.quantiles)) {
212 const auto ebegin = buffer.data(), elast = ebegin + ncomps;
214 output.min[gene] = *std::min_element(ebegin, elast);
217 output.mean[gene] = std::accumulate(ebegin, elast,
static_cast<Stat_
>(0)) / ncomps;
220 output.max[gene] = *std::max_element(ebegin, elast);
224 output.median[gene] = tatami_stats::medians::direct(ebegin, ncomps,
false);
226 if (output.quantiles.has_value()) {
227 (*quantile_calculators)(
230 [&](
const std::size_t i,
const Stat_ value) ->
void {
231 (*output.quantiles)[i][gene] = value;
238template<
typename Gene_,
typename Stat_,
typename Rank_>
239void summarize_comparisons(
241 const std::size_t ngroups,
242 const Stat_*
const effects,
243 const std::optional<std::vector<double> >& compute_quantiles,
244 const std::vector<SummaryBuffers<Stat_, Rank_> >& output,
248 auto summary_qcalcs = setup_multiple_quantiles<Stat_>(compute_quantiles, ngroups);
249 auto buffer = sanisizer::create<std::vector<Stat_> >(ngroups);
251 for (Gene_ gene = start, end = start + length; gene < end; ++gene) {
252 for (I<
decltype(ngroups)> l = 0; l < ngroups; ++l) {
253 const auto current_effects = effects + sanisizer::nd_offset<std::size_t>(0, ngroups, l, ngroups, gene);
254 summarize_comparisons(ngroups, current_effects, l, gene, output[l], summary_qcalcs, buffer);
260template<
typename Stat_,
typename Gene_>
261Gene_ fill_and_sort_rank_buffer(
const Stat_*
const effects,
const std::size_t stride, std::vector<std::pair<Stat_, Gene_> >& buffer) {
263 for (Gene_ i = 0, end = buffer.size(); i < end; ++i) {
264 const auto cureffect = effects[sanisizer::product_unsafe<std::size_t>(i, stride)];
265 if (!std::isnan(cureffect)) {
266 auto& current = buffer[counter];
267 current.first = cureffect;
275 buffer.begin() + counter,
276 [&](
const std::pair<Stat_, Gene_>& left,
const std::pair<Stat_, Gene_>& right) ->
bool {
278 if (left.first == right.first) {
279 return left.second < right.second;
281 return left.first > right.first;
289template<
typename Stat_,
typename Gene_,
typename Rank_>
290void compute_min_rank_pairwise(
292 const std::size_t ngroups,
293 const Stat_*
const effects,
294 const std::vector<SummaryBuffers<Stat_, Rank_> >& output,
295 const bool preserve_ties,
298 const auto ngroups2 = sanisizer::product_unsafe<std::size_t>(ngroups, ngroups);
299 const auto maxrank_placeholder = sanisizer::cast<Rank_>(ngenes);
301 tatami::parallelize([&](
const int,
const std::size_t start,
const std::size_t length) ->
void {
302 auto buffer = sanisizer::create<std::vector<std::pair<Stat_, Gene_> > >(ngenes);
303 for (I<
decltype(start)> g = start, end = start + length; g < end; ++g) {
304 const auto target = output[g].min_rank;
305 if (target == NULL) {
308 std::fill_n(target, ngenes, maxrank_placeholder);
310 for (I<
decltype(ngroups)> g2 = 0; g2 < ngroups; ++g2) {
314 const auto offset = sanisizer::nd_offset<std::size_t>(g2, ngroups, g);
315 const auto used = fill_and_sort_rank_buffer(effects + offset, ngroups2, buffer);
317 if (!preserve_ties) {
319 for (Gene_ i = 0; i < used; ++i) {
320 auto& current = target[buffer[i].second];
321 if (counter < current) {
330 const auto original = i;
331 const auto val = buffer[i].first;
333 auto& current = target[buffer[i].second];
334 if (counter < current) {
338 while (++i < used && buffer[i].first == val) {
339 auto& current = target[buffer[i].second];
340 if (counter < current) {
345 counter += i - original;
350 }, ngroups, threads);
353template<
typename Gene_,
typename Stat_,
typename Rank_>
354SummaryBuffers<Stat_, Rank_> fill_summary_results(
356 SummaryResults<Stat_, Rank_>& out,
357 const bool compute_min,
358 const bool compute_mean,
359 const bool compute_median,
360 const bool compute_max,
361 const std::optional<std::vector<double> >& compute_quantiles,
362 const bool compute_min_rank
364 SummaryBuffers<Stat_, Rank_> ptr;
365 const auto out_len = sanisizer::cast<typename std::vector<Stat_>::size_type>(ngenes);
368 out.min.resize(out_len
369#ifdef SCRAN_MARKERS_TEST_INIT
370 , SCRAN_MARKERS_TEST_INIT
373 ptr.min = out.min.data();
377 out.mean.resize(out_len
378#ifdef SCRAN_MARKERS_TEST_INIT
379 , SCRAN_MARKERS_TEST_INIT
382 ptr.mean = out.mean.data();
385 if (compute_median) {
386 out.median.resize(out_len
387#ifdef SCRAN_MARKERS_TEST_INIT
388 , SCRAN_MARKERS_TEST_INIT
391 ptr.median = out.median.data();
395 out.max.resize(out_len
396#ifdef SCRAN_MARKERS_TEST_INIT
397 , SCRAN_MARKERS_TEST_INIT
400 ptr.max = out.max.data();
403 if (compute_quantiles.has_value()) {
404 out.quantiles.emplace();
405 ptr.quantiles.emplace();
406 out.quantiles->reserve(compute_quantiles->size());
407 ptr.quantiles->reserve(compute_quantiles->size());
408 for ([[maybe_unused]]
const auto quan : *compute_quantiles) {
409 out.quantiles->emplace_back(out_len
410#ifdef SCRAN_MARKERS_TEST_INIT
411 , SCRAN_MARKERS_TEST_INIT
414 ptr.quantiles->push_back(out.quantiles->back().data());
418 if (compute_min_rank) {
419 out.min_rank.resize(out_len
420#ifdef SCRAN_MARKERS_TEST_INIT
421 , SCRAN_MARKERS_TEST_INIT
424 ptr.min_rank = out.min_rank.data();
430template<
typename Gene_,
typename Stat_,
typename Rank_>
431std::vector<SummaryBuffers<Stat_, Rank_> > fill_summary_results(
433 const std::size_t ngroups,
434 std::vector<SummaryResults<Stat_, Rank_> >& outputs,
435 const bool compute_min,
436 const bool compute_mean,
437 const bool compute_median,
438 const bool compute_max,
439 const std::optional<std::vector<double> >& compute_quantiles,
440 const bool compute_min_rank
442 sanisizer::resize(outputs, ngroups);
443 std::vector<SummaryBuffers<Stat_, Rank_> > ptrs;
444 ptrs.reserve(ngroups);
445 for (I<
decltype(ngroups)> g = 0; g < ngroups; ++g) {
447 fill_summary_results(
Marker detection for single-cell data.
Definition score_markers_pairwise.hpp:27
int parallelize(Function_ fun, const Index_ tasks, const int workers)
Pointers to arrays to hold the summary statistics.
Definition summarize_comparisons.hpp:33
Stat_ * mean
Definition summarize_comparisons.hpp:46
Stat_ * median
Definition summarize_comparisons.hpp:53
Stat_ * min
Definition summarize_comparisons.hpp:39
Stat_ * max
Definition summarize_comparisons.hpp:60
Rank_ * min_rank
Definition summarize_comparisons.hpp:82
std::optional< std::vector< Stat_ * > > quantiles
Definition summarize_comparisons.hpp:75
Container for the summary statistics.
Definition summarize_comparisons.hpp:92
std::vector< Stat_ > mean
Definition summarize_comparisons.hpp:103
std::vector< Stat_ > median
Definition summarize_comparisons.hpp:109
std::optional< std::vector< std::vector< Stat_ > > > quantiles
Definition summarize_comparisons.hpp:123
std::vector< Stat_ > min
Definition summarize_comparisons.hpp:97
std::vector< Rank_ > min_rank
Definition summarize_comparisons.hpp:129
std::vector< Stat_ > max
Definition summarize_comparisons.hpp:115